Systems and methods for adaptive blind mode equalization

ABSTRACT

Various embodiments described herein are directed to methods and systems for blind mode adaptive equalizer system to recover complex valued data symbols from the signal transmitted over time-varying dispersive wireless channels. For example, various embodiments may utilize an architecture comprised of a channel gain normalizer, a blind mode equalizer with hierarchical structure (BMAEHS) comprised of a level 1 adaptive system and a level 2 adaptive system, and an initial data recovery subsystem. The BMAEHS may additionally be comprised of an orthogonalizer for providing a faster convergence speed. In various architectures of the invention, the BMAEHS may be replaced by a cascade of multiple equalizer stages for providing computational and other advantages. Various embodiments may employ either linear or decision feedback configurations. In the communication receiver architectures, differential encoders and decoders are presented to resolve possible ambiguities. Adaptive digital beam former architecture is presented.

BACKGROUND

Broadband wireless systems are currently in a rapid evolutionary phase in terms of development of various technologies, development of various applications, deployment of various services and generation of many important standards in the field. The increasing demand on various services justifies the need for the transmission of data on various communication channels at the highest possible data rates. The multipath and fading characteristics of the wireless channels result in various distortions, the most important of those being the inter-symbol interference (ISI) especially at relatively high data rates. Adaptive equalizers are employed to mitigate the ISI introduced by the time varying dispersive channels and possibly arising from other sources. In one class of adaptive equalizers, a training sequence known to the receiver is transmitted that is used by adaptive equalizer for adjusting the equalizer parameter vector to a value that results in a relatively small residual ISI. After the training sequence, the data is transmitted during which period the equalizer continues to adapt to slow channel variations using decision directed method.

Among the various algorithms to adapt the equalizer parameter vector are the recursive least squares (RLS) algorithm, weighted Kalman filter, LMS algorithm, and the quantized state (QS) algorithm, the last one taught by Kumar et. al. in “Adaptive Equalization Via Fast Quantized-State Methods,” IEEE Transactions on Communications, Vol. COM-29, No. 10, October 1981. Kumar at. al. teach orthogonalization process to arrive at fast and computationally efficient identification algorithms in, “State Inverse and Decorrelated State Stochastic Approximation,” Automatica, Vol. 16, May 1980. The training approach, however, is not desirable in many communication applications such as those involving video conference type of applications that will require a training sequence every time a different speaker talks. Moreover, the need for training sequence results in a significant reduction in capacity as for example, in GSM standard, a very significant part of each frame is used for the equalizer training sequence. Also, if during the decision-directed mode the equalizer deviates significantly due to burst of noise or interference, all the subsequent data will be erroneously received by the receiver until the loss of equalization is detected and the training sequence is retransmitted and so on.

There are many other applications where the equalizers are applied as in antenna beam forming, adaptive antenna focusing of the antenna, radio astronomy, navigation, etc. For example, Kumar et. al. teach in Method and Apparatus for Reducing Multipath Signal Error Using Deconvolution, U.S. Pat. No. 5,918,161, June 1999, an equalizer approach for a very different problem of precise elimination of the multipath error in the range measurement in GPS receiver. In all of the various applications of equalizers and due to various considerations such as the logistics and efficiency of systems, it has been of great interest to have the equalizer adapt without the need for a training sequence. Such equalizers are the termed the “blind mode” equalizers.

Among some of the approaches to blind mode equalization are the Sato's algorithm and Goddard's algorithm that are similar to the LMS and RLS algorithms, respectively, except that these may not have any training period. Kumar, in “Convergence of A Decision-Directed Adaptive Equalizer,” Proceedings of the 22nd IEEE Conference on Decision and Control, 1983, Vol. 22, teaches a technique wherein an intentional noise with relatively high variance is injected into the decision-directed adaptive algorithm with the noise variance reduced as the convergence progressed and shows that the domain of convergence of the blind mode equalizer was considerably increased with the increase in the noise variance at the start of the algorithm. The technique taught by Kumar is analogous to the annealing in the steel process industry and in fact the term simulated annealing was coined after the introduction by Kumar. Lambert et. al., teach the estimation of the channel impulse response from the detected data in, “Forward/Inverse Blind Equalization,” 1995 Conference Record of the 28th Asilomar Conference on Signals, Systems and Computers, Vol. 2, 1995. Another blind mode equalization method applicable to the case where the modulated data symbols have a constant envelope and known as constant modulus algorithm (CMA) taught by Goddard in “Self-recovering Equalization and Carrier Tracking in Two-Dimensional Data Communication System,” IEEE Transactions on Communications, vol. 28, No. 11, pp. 1867-1875, November, 1980, is based on minimization of the difference between the magnitude square of the estimate of the estimate of the data symbol and a constant that may be selected to be 1.

The prior blind mode equalizers have a relatively long convergence period and are not universally applicable in terms of the channels to be equalized and in some cases methods such as the one based on polyspectra analysis are computationally very expensive. The CMA method is limited to only constant envelope modulation schemes such as M-phase shift keying (MPSK) and thus are not applicable to modulation schemes such as M-quadrature amplitude modulation (MQAM) and M-amplitude shift keying (MASK) modulation that are extensively used in wireless communication systems due to their desirable characteristics. Tsuie et. al. in, Selective Slicing Equalizer, Pub. No. US 2008/0260017 A1, Oct. 23, 2008, taught a selective slicing equalizer wherein in a decision feedback equalizer configuration, the input to the feedback path may be selected either from the combiner output or the output of the slicer depending upon the combiner output.

The prior blind mode equalization techniques may involve local minima to which the algorithm may converge resulting in high residual ISI. Thus it is desirable to have blind mode adaptive equalizers that are robust and not converging to any local minima, have wide applicability without, for example, restriction of constant modulus signals, are relatively fast in convergence, and are computationally efficient. The equalizers of this invention possess these and various other benefits.

Various embodiments described herein are directed to methods and systems for blind mode adaptive equalizer system to recover the in general complex valued data symbols from a signal transmitted over time-varying dispersive wireless channels. For example, various embodiments may utilize an architecture comprised of a channel gain normalizer comprised of a channel signal power estimator, a channel gain estimator and a parameter a estimator for providing nearly constant average power output and for adjusting the dominant tap of the normalized channel to close to 1, a blind mode equalizer with hierarchical structure (BMAEHS) comprised of a level 1 adaptive system and a level 2 adaptive system for the equalization of the normalized channel output, and an initial data recovery for recovery of the data symbols received during the initial convergence period of the BMAEHS and pre appending the recovered symbols to the output of the BMAEHS providing a continuous stream of all the equalized symbols.

The level 1 adaptive system of the BMAEHS is further comprised of an equalizer filter providing the linear estimate of the data symbol, the decision device providing the detected data symbol, an adaptation block generating the equalizer parameter vector on the basis of a first correction signal generated within the adaptation block and a second correction signal inputted from the level 2 adaptive system. The cascade of the equalizer filter and the decision device is referred to as the equalizer. The first correction vector is based on the error between the input and output of the decision device. However, in the blind mode of adaptation, the first error may converge to a relatively small value resulting in a false convergence or convergence to one of the local minima that are implicitly present due to the nature of the manner of generation of the first error. To eliminate this possibility, the level 2 adaptive system estimates a modeling error incurred by the equalizer. The modeling error is generated by first obtaining an independent estimate of the channel impulse response based on the output of the decision device and the channel output and determining the modeling error as the deviation of the impulse response of the composite system comprised of the equalizer filter and the estimate of the channel impulse response from the ideal impulse comprised of all but one of its elements equal to 0. In case the equalizer tends to converge to a false minimum, the magnitude of the modeling error gets large and the level 2 adaptive system generates the second correction signal to keep the modeling error small and thereby avoiding convergence to a false or local minimum.

In the invented architecture, the channel gain estimator is to normalize the output of the channel so as to match the level of the normalized signal with the levels of the slicers present in the decision device, thereby resulting in increased convergence rate during the initial convergence phase of the algorithm. This is particularly important when the modulated signal contains at least part of the information encoded in the amplitude of the signal as, for example, is the case with the MQAM and MASK modulation schemes.

In another one of the various architectures of the invention for blind mode adaptive equalizer system, the BMAEHS is additionally comprised of an orthogonalizer, wherein the two correction signals generated in level 1 and level 2 adaptive systems are first normalized to have an equal mean squared norms and wherein the orthogonalizer provides a composite orthogonalized correction signal vector to the equalizer. The process of orthogonalization results in introducing certain independence among the sequence of correction signal vectors. The orthogonalization may result in fast convergence speeds in blind mode similar to those in the equalizers with training sequence.

In another one of the various architectures of the invention for blind mode adaptive equalizer system, the BMAEHS is replaced by a cascade of multiple equalizer stages with multiplicity m greater than 1 and with each equalizer stage selected to be one of the BMAEHS or the simpler blind mode adaptive equalizer (BMAE). In the architecture, the input to the ith equalizer stage is the linear estimate of data symbol generated by the (i−1)th equalizer stage, and the detected data symbol from the (i−1)th equalizer stage provides the training sequence to the ith equalizer stage during the initial convergence period of the ith equalizer stage for i=2, . . . , m. In one of the embodiments of the architecture, m=2, with the first equalizer stage selected to be a BMAEHS and the second equalizer stage selected to be a BMAE. In the cascaded architecture, the BMAEHS ensures convergence bringing the residual ISI to a relatively small error such that the next equalizer stage may employ a relatively simple LMS algorithm, for example. The equivalent length of the cascade equalizer is the sum of the lengths of the m stages, and the mean squared error in the estimation of the data symbol depends upon the total length of the equalizer, the cascaded architecture has the advantage or reduced computational requirements without a significant loss in convergence speed, as the computational requirement may vary more than linearly with the length of the equalizer,

Various architectures of the invention use a linear equalizer or a decision feedback equalizer in the level 1 adaptive system. In one of the various architectures of the invention, FFT implementation is used for the generation of the second correction signal resulting in a further significant reduction in the computational requirements.

In various embodiments of the invention, an adaptive communication receiver for the demodulation and detection of digitally modulated signals received over wireless communication channels exhibiting multipath and fading is described with the receiver comprised of an RF front end, an RF to complex baseband converter, a band limiting matched filter, a channel gain normalizer, a blind mode adaptive equalizer with hierarchical structure, an initial data segment recovery circuit, a differential decoder, a complex baseband to data bit mapper, and an error correction code decoder and de-interleaver providing the information data at the output of the receiver without the requirements of any training sequence.

The differential decoder in the adaptive receiver performs the function that is inverse to that of the encoder in the transmitter. The differential encoder is for providing protection against phase ambiguity with the number of phase ambiguities equal to the order of rotational symmetry of the signal constellation of the baseband symbols. The phase ambiguities may be introduced due to the blind mode of the equalization. The number of phase ambiguities for the MQAM signal is 4 for any M equal to N2 with N equal to any integer power of 2, for example M=16 or 64. The architecture for the differential encoder is comprised of a phase threshold device for providing the reference phase for the sector to which the baseband symbol belongs, a differential phase encoder, an adder to modify the output of the differential phase encoder by a difference phase, a complex exponential function block, and a multiplier to modulate the amplitude of the baseband symbol onto the output of the complex exponential function block, and applies to various modulation schemes. The architecture presented for the decoder is similar to that of the differential encoder and is for performing the function that is inverse to that of the encoder.

In various embodiments of the invention, an adaptive beam former system is described with the system comprised of an antenna array, a bank of RF front ends receiving signals from the antenna array elements and a bank of RF to baseband converters with their outputs inputted to the adaptive digital beam former that is further comprised of an adaptive combiner, a combiner gain normalizer, a decision device, and a multilevel adaptation block for receiving data symbols transmitted form a source in a blind mode without the need for any training sequence and without the restriction of a constant modulus on the transmitted data.

BRIEF DESCRIPTION OF THE DRAWINGS

Various embodiments of the present invention are described here by way of example in conjunction with the following figures, wherein:

FIG. 1 shows a block diagram of one embodiments of blind mode adaptive equalizer system.

FIG. 2 shows one embodiment of the digital communication system with blind mode adaptive equalizer system.

FIG. 3A shows a block diagram one embodiment of differential encoder.

FIG. 3B shows the signal constellation diagram of 16QAM signal.

FIG. 4 shows a block diagram of one embodiment of differential decoder.

FIG. 5 shows a block diagram of one embodiment of channel gain normalizer.

FIG. 6 shows a block diagram of one embodiment of blind mode adaptive equalizer with hierarchical structure (BMAEHS) with linear equalizer.

FIG. 7 shows a block diagram of one embodiment of channel estimator.

FIG. 8 shows a block diagram of one embodiment of correction signal generator for linear equalizer.

FIG. 9 shows one embodiment of the FFT Implementation of the correction signal generator.

FIG. 10 shows a block diagram of one embodiment of blind mode adaptive equalizer with hierarchical structure with decision feedback equalizer.

FIG. 11 shows one embodiment of the correction signal generator for decision feedback equalizer.

FIG. 12 shows a block diagram of one embodiment of blind mode adaptive equalizer with hierarchical structure and with orthogonalizer.

FIG. 13 shows one embodiment of correction signal vector normalizer.

FIG. 14 shows a block diagram of one embodiment of the cascaded equalizer.

FIG. 15 shows a block diagram of one embodiment of block diagram of the adaptive digital beam former system

FIG. 16 shows one embodiment of an example computer device.

DETAILED DESCRIPTION OF THE PREFERRED EMBODIMENTS

The following description is provided to enable any person skilled in the art to make and use the invention and sets forth the best modes contemplated by the inventor of carrying out his invention. Various modifications, however, will remain readily apparent to those skilled in the art, since the generic principles of the present invention have been defined herein specifically to provide systems and methods for blind mode equalization of signals received over time varying dispersive channels, and for recovering the data symbols transmitted from a source in blind mode with adaptive beamformers.

FIG. 1 shows a block diagram for one of the various embodiments of the invention. Referring to FIG. 1, the transmitted data symbol a_(k+ K) ₁ , k+ K ₁=0, 1, . . . is in general a complex valued sequence of data symbols taking values from a set of M possible values with K ₁ denoting some reference positive integer. For example, for the case of the QPSK modulation in digital communication systems, a_(k)=a_(I,k)+j a_(Q,k), with j=√{square root over (−1)}, and with a_(I,k) and a_(Q,k) denoting the real and imaginary components of a_(k) taking possible values +A₀ and −A₀ for some constant A₀>0. For the case of MQAM modulation with the number of points M in the signal constellation equal to N² for some positive integer N that is normally selected to be an integer power of 2, each of a_(I,k) and a_(Q,k) may take possible values from the set of N values given by {±1, ±3, . . . , ±(N−1)} A₀. Similarly for the MPSK modulation, a_(k) takes possible values from the set of M values given by {A₀ exp(j((2m−1)π/M); M=1, 2, . . . , M}. Referring to FIG. 1, the sequence of data symbols 1 a_(k+ K) ₁ is input to the discrete-time channel where the impulse response h ^(cT) of the discrete-time channel 2 is represented by a vector of length M=2M₁+1 given by

h ^(cT) =[h _(−M) ₁ ^(c) . . . h ⁻¹ ^(c) h ₀ ^(c) h ₁ ^(c) . . . h _(M) ₁ ^(c)]  (1)

In (1) T denotes matrix transpose. The output of the discrete-time channel is given by the convolution of the input data symbol sequence a_(k) with the channel impulse response h ^(cT) given in (2a). The output 3 of the discrete-time channel is modified in the adder 5 by the channel noise 4 n_(k+ K) ₁ ^(c) of variance 2σ_(n) ² generating the signal z_(k+ K) ₁ ^(c). The noisy channel output signal 6 z_(k+ K) ₁ ^(c) given by (2b) is input to the blind mode adaptive equalizer system 80.

$\begin{matrix} {{{y_{k_{0}} = {{\sum\limits_{i = {- M_{1}}}^{M_{1}}{h_{i}^{c^{*}}a_{k_{0} - i}}} = {{\overset{\_}{h}}^{cH}\overset{\_}{x}}}};}{{\overset{\_}{x}}_{k_{0}} = \left\lbrack {a_{k_{0} + M_{1}},\ldots \mspace{14mu},a_{k_{0}},\ldots \mspace{14mu},a_{k_{0} - M_{1}}} \right\rbrack^{T}}} & \left( {2a} \right) \\ {{{z_{k_{0}} = {y_{k_{0}} + n_{k_{0}}^{c}}};{k_{0} = {k + {\overset{\_}{K}}_{1}}};{k_{0} = 0}},1,\ldots} & \left( {2b} \right) \end{matrix}$

In (2a), H denotes the matrix conjugate transpose operation and * denotes the complex conjugate operation.

Referring to FIG. 1, the noisy channel output signal 6 z_(k+ K) ₁ ^(c) is input to the channel gain normalizer block 7. The channel gain normalizer estimates the average signal power at the output of the discrete-time channel and normalizes the noisy channel output signal 6 such that the signal power at the output of the channel gain normalize 7 remains equal to some desired value even in the presence of the time-varying impulse response of the discrete-time channel as is the case with the fading dispersive channels in digital communication systems. The output 8 of the channel gain normalize 7 is given by

$\begin{matrix} {{{z_{k + K_{1}} = {{\sum\limits_{i = {- M_{1}}}^{M_{1}}{h_{i}^{*}a_{k + K_{1} - i}}} + n_{k + K_{1}}}};{{k + K_{1}} = 0}},1,2,\ldots} & (3) \end{matrix}$

In (3) K₁= K ₁−N_(p) with N_(p) denoting the delay incurred in channel gain normalizer block 7 and {h_(i), i=−M₁, . . . 0, . . . M₁} denotes the normalized channel impulse response. Equation (3) may alternatively be written in the form of (4).

z _(k) ₀ =h ^(−H) x _(k) ₀ +n _(k) ₀ ;h ^(−H) =[h _(−M) ₁ . . . h ⁻¹ h ₀ h ₁ . . . h _(M) ₁ ]*;k ₀ =k+K ₁  (4)

In (4) x _(k) ₀ is the channel state vector given by (2a).

Referring to FIG. 1, the output 8 of the channel gain normalize block 7 z_(k+K) ₁ is input to the level 1 adaptive system 40, of the blind mode adaptive equalizer with hierarchical structure (BMAEHS) 60, that provides the detected data symbols 12 a_(k+M) ₁ ^(d) at time k=−M₁, −M₁+1, . . . with N₁=K₁−M₁ denoting the equalizer delay. The level 1 adaptive system 40 is comprised of an equalizer filter 9 with a time varying equalizer parameter vector ŵ _(k) of length N=N₁+N₂+1 for some positive integers N₁ and N₂ where N₁ and N₂ may be selected to be equal, an adaptation block 16 that adjusts the equalizer parameter vector 15 ŵ _(k), and the decision device 11 that detects the data symbol from the input signal 10 present at the input of the decision device 11 based on the decision function Δ( ). In various embodiments of the invention, the equalizer filter 9 may be a linear or a decision feedback filter, or a more general nonlinear equalizer filter characterized by a time varying parameter vector 15 ŵ _(k). In one of the various embodiments of the invention with the decision feedback equalizer, the detected symbol 12 a_(k+M) ₁ ^(d) is fed back to the equalizer filter 9 via the delay block 13 that introduces a delay of one sample as shown in FIG. 1. The output 12 b of the delay 13 is inputted to the equalizer filter 9. In one of the various embodiments of the invention with the linear equalizer, the equalizer state vector 14 ψ _(k) is comprised of the equalizer input z_(k+K) ₁ and the various delayed versions of z_(k+K) ₁ and is given by

ψ _(k) =[z _(k+K) ₁ , . . . ,z _(k+M) ₁ , . . . ,z _(k+M) ₁ _(−N) ₂ ]^(T) ;N2=N1  (5)

In an alternative embodiment of the invention with the case of the decision feedback equalizer filter, the equalizer state vector 14 ψ _(k) is also comprised of the various delayed versions of detected symbol 12 a_(k+M) ₁ ^(d). Referring to FIG. 1, the gain normalizer output also referred to as the normalized channel output 8 z_(k+K) ₁ , is input to the delay 31 that introduces a delay of K₁ samples in the input 38 and provides the delayed version 32 z_(k) to the model error estimator and the correction signal generator (MEECGS) block 17 of the level 2 adaptive system 50. Referring to FIG. 1, the detected data symbol 12 at the output of the decision device 11, and the equalizer parameter vector 15 ŵ _(k) are input to (MEECGS) block 17. The MEECGS block 17 estimates the channel impulse response vector h ^(T) from the detected symbol 12 a_(k+M) ₁ ^(d) and the delayed normalized channel output 32 z_(k), determines any modeling error made by the level 1 adaptive system 40 and generates the correction signal 18 ŵ _(k) ^(c) ² to mitigate such a modeling error.

In the process of the blind mode equalization by the BMAEHS, the estimate of the data symbols 12 a_(k+M) ₁ during the initial period of convergence of the BMAEHS of length N_(d) has relatively high probability of error. The initial period of convergence N_(d) is the time taken by the BMAEHS 60 to achieve some relatively small mean squared equalizer error measured after the first N₁+1 samples at the output 8 of the channel gain normalize 7 are inputted to the BMAEHS 60 and may be selected to be about 100-200 samples. The data symbols during the initial convergence period are recovered by the initial data recovery block 75 of FIG. 1.

Referring to FIG. 1, the output 8 of the channel gain normalize 7 z_(k+K) ₁ is inputted to the quantizer block 19. The quantizer 19 may quantize the input samples to (n_(q)+1) bits with n_(q) denoting the number of magnitude bits at the quantizer output, so as to minimize the memory requirements for storing the initial segment of the channel gain normalizer output. The number of quantizer bits may be selected on the basis of the signal to noise power ratio expected at the noisy channel output signal 6 so that the variance of the quantization noise is relatively small compared to the variance of the channel noise. The signal to quantization noise power ratio is given approximately by 6(n_(q)+1) dB and a value of n_(q) equal to 3 may be adequate. In various other embodiments of the invention, the quantizer may be eliminated and the channel gain normalizer output 8 z_(k+K) ₁ may be directly inputted to the delay 21.

Referring to FIG. 1, the output of the quantizer 20 z_(k+K) ₁ ^(q) is inputted to the delay 21 that introduces a delay of N_(d) samples. The output of the delay 21 is inputted to the fixed equalizer 24. The fixed equalizer is comprised of the cascade of the equalizer filter and the decision device blocks similar to the equalizer filter 9 and the decision device 11 blocks respectively of the BMAEHS 60. As shown in FIG. 1, initially the switch S₁ is in open position and the fixed equalizer parameter vector 33 ŵ _(k) ^(f) remains fixed at δ _(N) ₁ _(,N) ₁ =[0 . . . 010 . . . 0]^(T) until the switch S₁ is closed. At k+K₁=N_(I)≡N_(d)+N₁, the switch S₁ is closed and the fixed equalizer parameter vector 33 ŵ _(k) ^(f) is set equal to the equalizer parameter vector 15 ŵ _(k) at the time of closing the switch and remains fixed for k+K₁>N_(I). The output of the fixed equalizer 25 a_(k+M) ₁ _(N) _(d) ^(I), M₁=K₁−N₁, is connected to the position 2 of the switch S₂ 26. Referring to FIG. 1, the detected symbol 12 a _(k+M) ₁ ^(d) is input to the delay 29 that introduces a delay of N_(d) samples. The output 27 of the delay 29 equal to a_(k+M) ₁ _(−N) _(d) ^(d) is connected to the position 3 of the switch S₂ 26. The position 1 of the switch S₂ 26 is connected to the ground. For k+K₁<N_(I), the switch S₂ 26 remains in position 1 and the output of the switch S₂ 26 is equal to 0 during this period. During the period N_(I)≦k+K₁<N_(I)+N_(d), the switch S₂ 26 is connected to position 2 and the final detected data 30 a _(k+M) ₁ _(−N) _(d) ^(d) ^(f) is taken from the output of the fixed equalizer 24. During the period k+K₁≧N_(I)+N_(d), the output of the switch S₂ 26 is taken from the output of the BMAEHS 60. The output of the switch S₂ 26 constitutes the final detected data symbol 30 a_(k+M) ₁ _(−N) _(d) ^(d) ^(f) . In various other embodiments of the invention, the recovery of the initial data segment may not be required and the initial data segment recovery block of FIG. 1 may not be present. In such alternative embodiments the final detected symbol output is taken directly from the output of the BMAEHS. As shown in FIG. 1, the detected symbol 12 a_(k+M) ₁ ^(d) may be inputted to the channel gain normalizer block 7.

FIG. 2 shows the block diagram of a digital communication system 101 embodying the blind mode adaptive equalizer system 80 of FIG. 1. Referring to FIG. 2, the information data sequence 110 d_(i) possibly taking binary values 0 and 1 is input to the error correction code encoder and the interleaver block 111. The error correction coding and the interleaving operations on the information data are performed to protect the information data 110 d_(i) from the possible errors caused due to various channel noise, disturbances, and interference. The coded data bits sequence c_(i) at the output 112 of the error correction code encoder and the interleaver block 111 may also be taking binary values. The coded data 112 c_(i) is input to the complex baseband modulator 113 that groups a number m of coded data bits and maps the group into 1 out of M=2^(m) possible complex values representing points in the signal constellation generating the sequence of the complex valued baseband symbols b_(k) at the output 114 of the complex baseband modulator 113. For example, for the case of QPSK modulation corresponding to M=4, b_(k)=b_(I,k)+jb_(Q,k); j=√{square root over (−1)}, with b_(I,k) and b_(Q,k) each taking possible values A₀ and −A₀ for some positive constant A₀.

Referring to FIG. 2, the sequence of baseband symbols 114 b_(k) is input to the differential encoder block 115. The differential encoder block 115 transforms the sequence of baseband symbols 114 b_(k) into another complex valued sequence of data symbols 116 a_(k) wherein the signal constellation of a_(k) is same as that of the sequence b_(k). For example, for the case of the QPSK modulation with a_(k)=a_(I,k)+ja_(Q,k), both a_(I,k) and a_(Q,k) may take possible values A₀ and −A₀. The differential encoder 115 protects the information data 110 against possible phase ambiguity introduced at the receiver. The phase ambiguity may arise, for example, in the generation of the reference carrier signal, not shown, using nonlinear processing of the received signal as by the use of a fourth power nonlinearity in the case of QPSK modulation. The phase ambiguity may also occur in the use of the blind mode adaptive equalizer and may have a value of 2πn/M with n=0, 1, . . . , (M−1) for the case of MPSK modulation with M=4 for the QPSK modulation. More generally the number of phase ambiguities arising due to the blind mode equalizer may be equal to the number of distinct phase rotations of the signal constellation diagram that leaves the signal constellation diagram invariant.

Referring to FIG. 2 the sequence of the data symbols 116 a_(k) at the output of the differential encoder 115 is inputted to the band limiting filter 117. The band limiting filter 117 may be a square root raised cosine filter used to minimize the bandwidth required for the transmission of the modulated RF signal. With the use of the square root raised cosine filter the absolute bandwidth of the filtered signal u_(k) at the output 118 of the band limiting filter is reduced to R_(s)(1+r)/2 where R_(s) is the symbol rate of the data symbols a_(k) and r with 0<r≦1 denotes the filter roll off factor as compared to a zero crossing bandwidth of the input data symbol sequence a_(k) equal to R_(s). The band limited symbol sequence 118 u_(k) is inputted to the complex baseband to RF converter block 119 that shifts the center frequency of the spectrum of the signal 118 u_(k) to the RF or possibly an intermediate (IF) frequency. The complex baseband to RF converter block 119 may in general have several stages including the conversion to the RF or some intermediate frequency (IF), and digital to analog conversion. The RF signal 120 u_(RF)(t) at the output of the complex baseband to RF converter block 119 is inputted to the RF back end block 121 that is comprised of the RF band pass filter, the power amplifier, and possibly conversion from IF to RF frequency. The amplified signal 122 u_(T)(t) is connected to the transmit antenna 123 for transmission of the RF signal into the wireless channel that may exhibit multipath propagation and fading resulting in the introduction of the inter symbol interference (ISI) in the transmitted signal.

Referring to FIG. 2 the RF signal at the output of the wireless channel is received by the receive antenna 124 providing the received RF signal 125 ν_(R)(t) to the input of the RF front end block 126 of receiver 100. The RF front end block may be comprised of a low noise amplifier (LNA), RF band pass filter, other amplifier stages, and possibly conversion from RF to IF and provides the amplified RF signal 127 ν_(RF)(t) at the output of the RF front end block. The receive antenna 124 and the RF front end block 126 may introduce additive noise including the thermal noise into the signal RF signal in the process of receiving and amplifying the RF signal at the output of the wireless channel. Referring to FIG. 2, the amplified RF signal 127 is inputted to the RF to complex baseband converter block 128 that down converts the RF signal to the complex baseband signal 129. The RF to complex baseband converter block 128 may be comprised of a RF to IF down converter, the IF to complex baseband converter and an analog to digital converter. The complex baseband signal 129 ν_(k) at the output of the RF to complex baseband converter block 128 is inputted to band limiting matched filter block 130 that may be comprised of a band limiting filter that is matched to the band limiting filter used at the transmitter and a down sampler. For the case of square root raised cosine filter used as the band limiting filter 117 at the transmitter, the band limiting filter 130 at the receiver is also the same square root raised cosine filter 117 at the transmitter. The design of the band limiting matched filter block 130 and various other preceding blocks both in the transmitter and receiver are well known to those skilled in the art of the field of this invention.

Referring to FIG. 2 the output 6 z_(k+ K) ₁ ^(c) with K ₁ denoting some reference positive integer, of the band limiting matched filter block 130 is inputted to the blind mode adaptive equalizer system 80. The blind mode adaptive equalizer system is comprised of the channel gain normalizer 7, the blind mode adaptive equalizer with hierarchical structure (BMAEHS) 60 and the initial data segment recovery circuit 75. The details of the blind mode adaptive equalizer system 80 are shown in FIG. 1. The cascade of the various blocks comprised of the band limiting filter 117, complex baseband to RF converter 119, the RF back end 121 and the transmit antenna 123, at the transmitter, wireless communication channel, and the receive antenna 124, the RF front end 126, RF to complex baseband converter 128 and the band limiting matched filter 130 at the receiver may be modeled by the cascade comprised of an equivalent discrete time channel 2 with input symbols a_(k+ K) ₁ with K ₁ denoting some positive reference integer wherein a channel noise 4 n _(k+ K) ₁ is added to the output of the channel 2 as shown in FIG. 1. The equivalent discrete time channel may have some unknown impulse response h ^(c) that models the combined response of all the blocks in the said cascade.

Referring to FIG. 2, the channel gain normalizer 7 estimates the average signal power at the output of the equivalent discrete-time channel and normalizes the noisy channel output such that the signal power at the output of the channel gain normalizer remains equal to some desired value even in the presence of the time-varying impulse response of the discrete-time channel as is the case with the fading dispersive channels in the digital communication system of the FIG. 2. The BMAEHS 60 mitigates the impact of the inter symbol interference that may be caused by the multipath propagation in the wireless channel without requiring any knowledge of the channel impulse response or the need of any training sequence. The detected symbols during the initial convergence time of the BMAEHS may have relatively large distortion. The initial data segment recovery block 70 of FIG. 2 reconstructs the detected symbols during the initial convergence time based on the converged parameters of the BMAEHS and pre appends to the detected symbols at the output of the BMAEHS after the initial convergence time thereby mitigating the ISI from the initial data segment as well. The sequence of the final detected data symbols 30 a _(k+M) ₁ _(−N) _(d) ^(d) ^(f) with N_(d) denoting the initial convergence time for the BMAEHS and M₁ a positive integer, the output of the blind mode adaptive equalizer system are inputted to the differential decoder block 131. The differential decoder block 131 performs an inverse operation to that performed in the differential encoder block 115 at the transmitter generating the sequence of the detected baseband symbols 132 b_(k+M) ₁ _(−N) _(d) ^(d) at the output.

FIG. 3A shows the block diagram of the differential encoder 115 unit of FIG. 2 for the modulated signal such as QAM, MPSK or ASK. As shown in FIG. 3A, the baseband symbol b_(k) is inputted to the tan ₂ ⁻¹( ) block 203 that provides the four quadrant phase θ_(b,k) of the input b_(k) at the output with taking values between 0 and 2π. The phase θ_(b,k) is inputted to the phase threshold device 205 that provides the output 206 θ_(r,k) according to the decision function D_(p)( ) given by equation (6).

θ_(r,k) =D _(p)(θ_(b,k))=φ_(i);φ_(t) _(i) ≦θ_(b,k)<φ_(t) _(i+1) ;i=0, 1, . . . ,S−1  (6)

In (6) S denotes the order of rotational symmetry of the signal constellation diagram of the baseband signal b_(k) equal to the number of distinct phase rotations of the signal constellation diagram that leave the signal constellation unchanged and is equal to the number of phase ambiguities that may be introduced by the blind mode equalizer. In (6) φ_(t) _(i) ; i=0, 1, . . . , S−1 are the S threshold levels of the phase threshold device 205.

For illustration, FIG. 3B shows the signal constellation diagram of the 16 QAM signal that has order of rotational symmetry S equal to 4 with the possible phase ambiguities equal to 0, π/2, π, 3π/2 as the rotation of the signal constellation diagram by any of the four values 0, π/2, π, 3π/2 leaves the signal constellation unchanged. The threshold levels for the 16 QAM signal are given by . φ_(t) ₀ =0, φ_(t) ₁ =π/2, φ_(t) ₂ =π, φ_(t) ₃ =3π/2. The range of the phase given by φ_(t) _(i) ≦θ_(b,k)<φ_(t) _(i+1) defines the i^(th) sector of the signal constellation diagram equal to the i^(th) quadrant of the signal constellation diagram in FIG. 3B for i=0, 1, 2, 3. Referring to FIG. 3A the output of the phase threshold device 205 is equal to the reference phase φ_(i) for the i^(th) sector if θ_(b) lies in the i^(th) sector or quadrant. The output of the phase threshold device 205 base phase 206 θ_(r,k) is equal to one of the S possible values φ₀, . . . , φ_(S-1) Referring to FIG. 3A, the minimum reference phase φ₀ is subtracted from the base phase 206 θ_(r,k) by the adder 209. The output 215 θ_(i,k) of the adder 209 is inputted to the phase accumulator 210 comprised of the adder 216, mod 2π block 218 and delay 222, provides the output 221 θ_(c,k) according to equation (2b).

$\begin{matrix} {{{\theta_{c,k} = {\underset{2\pi}{mod}\left( {\theta_{i,k} + \theta_{c,{k - 1}}} \right)}};{k = 0}},1,{\ldots \mspace{14mu};{\theta_{c,{- 1}} = 0}}} & (7) \end{matrix}$

In (7) the mod 2π operation is defined as

$\begin{matrix} {{\underset{2\pi}{mod}(x)} = {x - {\left\lfloor \frac{x}{2\pi} \right\rfloor 2\pi}}} & (8) \end{matrix}$

In (8) └x┘ denotes the highest integer that is smaller than x for any real x. The use of mod 2π block 218 in FIG. 3A is to avoid possible numerical build up of the accumulator output phase 221 by keeping the accumulator output 221 within the range 0 to 2π for all values of time k.

Referring to FIG. 3A, the phase accumulator output 221 is inputted to the adder 224 that adds the phase φ₀ providing the output 226 θ_(p,k) to the adder 227. Referring to FIG. 3B for the case of 16QAM constellation, φ₀=π/4 and θ_(i,k) takes possible values 0, π/2, π, 3π/2. The output 221 θ_(c,k) of the phase accumulator can also have 0, π/2, π, 3π/2 as the only possible values. The output 226 θ_(p,k) of the differential phase encoder 220 has π/4, 3π/4, 5π/4, 7π/4 as the only possible values.

Referring to FIG. 3A, the signal 206 θ_(r,k) is subtracted from the signal 204 θ_(b,k) by the adder 207 providing the output 208 θ_(d,k) to the adder 227 that adds 208 θ_(d,k) to the differential phase encoder output 226 θ_(p,k) providing the phase of the encoded signal 228 θ_(a,k) at the output. The phase 228 θ_(a,k) is inputted to the block 231 providing the output 231 exp [jθ_(a,k)]; j=√{square root over (−1)} to the multiplier 232. Referring to FIG. 3A, the baseband symbol b_(k) is inputted to the absolute value block 201 that provides the absolute value 202 |b_(k)| to the multiplier 232. The output 116 a_(k)=|b_(k)|exp(jθ_(a,k)); j=√{square root over (−1)} of the multiplier 232 is the differentially encoded data symbol a_(k). The process of differential encoding leaves the magnitude of the symbol unchanged with |a_(k)|=|b_(k)| and with only the symbol phase modified.

As an example of the differential encoding process, FIG. 3B illustrates the encoding for the 16QAM signal. In FIG. 3B, the subscript k on various symbols has been dropped for clarity. Referring to FIG. 3B, the signal point b_(k)=(A₀+j2A₀); √{square root over (−1)}, marked by the symbol

in FIG. 3B, is encoded into the signal point a_(k)=(−A₀+j2A₀); j=√{square root over (−1)} marked by the symbol

in the figure. Referring to FIG. 3B, the phase θ_(r) is equal to φ₀=π/4, with the corresponding phase 215 θ_(i) equal to 0. In the illustration of FIG. 3B, θ_(c,k−1) is equal to π resulting in phase θ_(c,k) equal to π. Addition of φ₀=π/4 to θ_(c,k) results in the phase 226 θ_(p) equal to 5π/4 that is equal to φ₂. Addition of phase 208 θ_(d) equal to tan ₂ ⁻¹(3/1)−π/4≅0.15π to the phase θ_(p)=5π/4 results in θ_(a)=1.4π as shown in FIG. 3B. With the magnitude of a_(k) given by |a_(k)|=A₀√{square root over (10)}, the encoded data symbol a_(k)=A₀√{square root over (10)}exp(j1.4π); j=√{square root over (−1)} is obtained as shown in FIG. 3B by the symbol

. For the case of the PSK signals, the phase threshold device 205 D_(p)( ) is bypassed with the output 206 θ_(r,k) equal to the phase 204 θ_(b,k) and with the phase 208 θ_(d,k) equal to 0.

FIG. 4 shows the block diagram of the differential decoder 131 unit of FIG. 2. Referring to FIG. 4 the detected data symbol a_(k) ^(d), is inputted to the tan ₂ ⁻¹( ) lock 242 providing the phase θ_(a,k) of a_(k) ^(d), at the output 243. The phase 243 θ_(a,k) is inputted to the phase threshold device 245 that provides the output phase 244 θ_(o,k) computed according to the decision function D_(p)( ) given by equation (6). The output of the phase threshold device 245 is inputted to the differential phase decoder 270 providing the phase θ_(r,k) at the output 259. Referring to FIG. 4, the phase 244 θ_(o,k) is inputted to the adder 246 that subtracts φ₀ from θ_(r,k) with the output 250 θ_(q,k)=θ_(o,k)−φ₀. The phase θ_(q,k) is inputted to the delay 251 providing the delayed phase 252 θ_(q,k−1) to the adder 254 that subtracts θ_(q,k−1) from θ_(q,k) providing the output 255 θ_(i,k)=θ_(q,k)−θ_(q,k−1) to the adder 258 that adds φ₀ to the input 255 θ_(i,k) providing the output 259 θ_(r,k) to the adder 260. Referring to FIG. 4, the phase 243 θ_(a,k) and 244 θ_(o,k) are inputted to the adder 246 providing the phase difference 247 θ_(d,k)=θ_(a,k)−θ_(o,k) to the input of the adder 260 that adds θ_(d,k) to the phase 259 θ_(r,k) providing the phase 261 θ_(b,k) that is the phase of the differentially decoded signal b_(k) ^(d).

Referring to FIG. 4, the detected data symbol 30 a_(k) ^(d), is inputted to the absolute value block 240 providing the absolute value 241 |a_(k) ^(d)| to the multiplier 262. The output 261 θ_(b,k) is inputted to the block 264 providing the output 263 exp [jθ_(b,k)]; j=√{square root over (−1)} to the multiplier 262. The multiplier 262 provides the data detected symbol 132 b_(k) ^(d)=|a_(k) ^(d)|exp(jθ_(b,k)); j=√{square root over (−1)} at the multiplier 262 output.

Referring to FIG. 2, the detected baseband symbols 132 are input to the complex baseband to data bit mapper 133 that maps the complex baseband symbols 132 into groups of m binary bits each based on the mapping used in the complex baseband modulator block 113 at the transmitter. The sequence of the detected coded data bits 134 ĉ_(i) at the output of the complex baseband to data bit mapper block 133 is inputted to the error correction code decoder and deinterleaver block 135 that performs inverse operations to those performed in the error correction code encoder and interleaver block 111 at the transmitter and provides the detected information data sequence 136 {circumflex over (d)}_(i) at the output. In some communication systems, the band limiting filter may intentionally introduce some ISI caused by selecting the symbol rate to be higher than the Nyquist rate so as to increase the channel capacity. The blind mode adaptive equalizer system 80 of FIGS. 1, 2 will also mitigate the ISI arising both due to the intentionally introduced ISI and that arising from the wireless channel.

FIG. 5 shows the block diagram of the channel gain normalizer 7. Referring to FIG. 5, the noisy channel output 6 z_(k) ₀ ^(c), k₀=k+ K ₁, with K ₁ equal to a reference positive integer, is input to the channel power estimator block 370 that estimates the average power present at the noisy channel output 6. The noisy channel output 6 is input to the norm square block 310 that provides ζ_(k) ₀ |z_(k) ₀ ^(c)|² at the output 311. The output of the norm square block 310 is inputted to the accumulator 1 320 that accumulates the input 311 ζ_(k) ₀ over a period of time with an exponential data weighting providing the accumulated value 313 ζ_(k) ₀ ^(a) at the output with

ζ_(k) ₀ ^(a)=λ_(p)ζ_(k) ₀ ⁻¹ ^(a)+ζ_(k) ₀ ;k ₀=0,1,  (9)

In (9) the initial value of the accumulator output ζ⁻¹ ^(a) is set equal to 0, and λ_(P), 0<λ_(p)≦1, is a constant that determines the effective period of accumulation in the limit as k₀→∞ and is approximately equal to 1/(1−λ_(p)), for example, λ_(P) may be selected equal to 0.998. Referring to FIG. 1, a constant 1 is input to the accumulator 2 block 330 that provides at its output 330 κ_(k) ₀ ^(p) given by

κ_(k) ₀ ^(p)=λ_(P)κ_(k) ₀ ⁻¹ ^(p)+1;κ⁻¹ ^(p)=0;k ₀=0,1,  (10)

From (10), the value of κ_(k) ₀ ^(p) is given by κ_(k) ₀ ^(p)=(1−λ_(p) ^(k) ⁰ ⁺¹)/(1−λ_(p)); k₀=0, 1, . . . . The outputs of the accumulators 1 and 2 blocks 320 and 330 are inputted to divider 341 that divides the output 313 ζ_(k) ₀ ^(a) of the accumulator 320 by the output 333 κ_(k) ₀ ^(p) of the accumulator 330 providing the average power estimate 342 P_(T,k) ₀ =ζ_(k) ₀ ^(a)/κ_(k) ₀ ^(p) at the output of the divider 341.

Referring to FIG. 5, the average power estimate 342 P_(T,k) ₀ is input to the adder 343 that subtracts the estimate of the noise variance 344 {circumflex over (σ)}_(n) ² from 342 P_(T,k) ₀ resulting in the estimate 345 P_(c,k) ₀ of the signal power at the discrete-time channel 2 output. The noise variance estimate 344 may be some a-priori estimate of the channel noise variance or may be set equal to 0. The signal power estimate 345 P_(c,k) ₀ is input to the divider 349 that has its other input made equal to the desired signal power 346 P_(s)=E [|a_(k)|²] with E denoting the expected value operator. The desired signal power may be normalized by an arbitrary positive constant, for example by A₀ ² with A₀ simultaneously normalizing the threshold levels in (23)-(24) of the decision device 11 and the expected value E[|a_(k)|_(c)] in (14), (15). The divider 349 block divides the signal power estimate 345 P_(c,k) ₀ by 346 P_(s) and outputs the result 350 P_(G,k) ₀ =P_(c,k) ₀ /P_(s). The divider 349 output 350 P_(G,k) ₀ representing the discrete-time channel power gain is input to the square root block 351 that provides the channel gain 352 G_(k) ₀ =√{square root over (P_(G,k) ₀ )} at the output of the square root block. The channel gain G_(k) ₀ is made available to the multiplier 353. The initial convergence rate of the BMAEHS 60 may be increased by adjusting the channel gain G_(k) by a factor α_(k) that is derived on the basis of the statistics of the detected symbol a_(k) ^(d) at the output 12 of the BMAEHS. The adjustment factor α_(k) is derived such that the expected value of the magnitude of the real and imaginary components of a_(k) ^(d)=a_(I,k) ^(d)+ja_(Q,k) ^(d); j=√{square root over (−1)} approach E [|a_(I,k)|] and E[|a_(Q,k)|]; a_(k)=a_(I,k)+ja_(Q,k), respectively with convergence, where E denotes the expected value operation. Referring to FIG. 5, the detected symbol a_(k+M) ₁ ^(d) is inputted to the absolute value | |_(c) block 372. where in the operation of the absolute value block 372 for any complex valued argument z is defined by

|z| _(c) =|z _(r) |+j|z _(i) |;z=z _(r) +jz _(i) ;j=√{square root over (−1)};z _(r) ,z _(i)real  (11)

Referring to FIG. 5, the output 373

a_(k + M₁)^(d)_(c)

of the absolute value block 372 is inputted to the switch S 374 that is closed at k+M₁=N_(p)+N₁+1 and remains closed thereon where N₁ is the delay introduced by the BMAEHS block 60. The output 374 ν_(k) 374 of the switch S is inputted to the averaging block 395 that averages the input ν_(k) over consecutive periods of n_(s) samples. The averaging period n_(s) may be selected to be equal to 10. The averaging block is comprised of the delay 376, adder 377, delay 379, down sampler 385, and multiplier 382. Referring to FIG. 5, the output of switch S is inputted to the adder 377 and to the delay 376 that provides the delayed version y_(k−n) _(s) to the adder 377. The output of the adder 377 ν_(k) ^(s) is input to the delay 379 providing output 380 ν_(k−1) ^(s) to the input of the adder 377. The output of the adder 377 may be written as

$\begin{matrix} {{v_{k}^{s} = {v_{k - 1}^{s} + v_{k} - v_{k - n_{s}}}};{v_{0}^{s} = 0};{v_{k}^{s} = {\sum\limits_{j = {k - n_{s} + 1}}^{k}v_{j}}}} & (12) \end{matrix}$

The output ν_(k) ^(s) of the adder 377 is inputted to the down sampler 385 that samples the input 378 at intervals of n_(s) samples with the output 381 ν_(|) ^(s) inputted to the multiplier 382. The multiplier 382 normalizes the input ν_(|) ^(s) by n_(s) providing the average output ν_(|) ^(a) given by

$\begin{matrix} {{{v_{I}^{a} = {\frac{1}{n_{s}}{\sum\limits_{i = {({I - 1})}}^{{In}_{s}}v_{i}}}};{I = 1}},2,\ldots} & (13) \end{matrix}$

The output ν_(|) ^(a) of the averaging block 395 is inputted to the divider block 386 that divides ν_(|) ^(a) by input 384 E[|a_(k)| _(c) ] given by

E[|a _(k)| _(c) ]=E[|a _(I,k) |]+jE[|a _(Q,k) |];a _(k) =a _(I,k) +ja _(Q,k) ;j=√{square root over (−1)}  (14)

For example, when both a_(I,k) and a_(Q,k) take possible values ±A₀ and ±3A₀ with equiprobable distribution, then

E[|a _(k)| _(c) ]=2A ₀ +j2A ₀ ;j=√{square root over (−1)}  (15)

Referring to FIG. 5, the output of the divider 386 e_(|) ^(m)=ν_(|) ^(a){E [|a_(k)| _(c) ]}⁻¹ may measure the deviation of the magnitude of the real and imaginary components of the BMAEHS 60 output from the expected values E[|a_(I,k)|] and E[|a_(Q,k)|] respectively. The magnitude error e_(|) ^(m) is inputted to the multiplier 388 that multiplies e_(|) ^(m) by a relatively small positive number μ_(a) providing the output 389 equal to μ_(a)e_(|) ^(m) the input of the adder 392. The output of the adder α₁ is inputted to the delay 391. The output 394 α₁₋₁ of the delay 391 is inputted to the adder 390 that provides the output 392 α₁ according to

α_(|)=α_(|−1)+μ_(a) e _(|) ^(m);|=1,2, . . . ;α₀=1  (16)

The output 392 α₁ of the adder 390 is inputted to the up sampler block 393 that increases the sampling rate by a factor n_(s) using sample hold. The output 396 α_(k) ₀ of the sampler block 393 is inputted to the multiplier 353 that adjusts the channel gain estimate G_(k) ₀ by a_(k) ₀ providing the output 354 G_(k) ₀ ^(m) to the divider 365.

Referring to FIG. 5, the noisy channel output 6 z_(k) ₀ ^(c) is input to delay block 361 that introduces a delay of N_(p) samples that is the number of samples required to provide a good initial estimate of G_(k) ₀ ^(m) and may be selected equal to 50. The output of the delay block 361 is input to the divider 365 that normalizes the delay block output 362 by the modified channel gain 354 G_(k) ₀ ^(m) providing the normalized channel output 8 z_(k+K) ₁ ; k+K₁=0, 1, . . . , with K₁= K ₁−N_(p).

The parameter α_(k) matches the amplitude of the real and imaginary components of the normalized channel output to the threshold levels of the slicers in the decision device, thereby also making the probability distribution of the detected data symbols a_(k) ^(d) equal to the probability distribution of the data symbols a_(k). This can also be achieved in an alternative embodiment of the invention by making the dominant center element h₀ of the normalized channel impulse response h equal to 1. For the case when both the data symbols and the channel impulse response vector are real valued, the parameter α_(k) may be estimated in terms of the channel dispersion defined as

$\begin{matrix} {d = \left\{ {1 - \frac{{h_{0}}^{2}}{{\overset{\_}{h}}^{2}}} \right\}^{1/2}} & (17) \end{matrix}$

Thus for the normalized channel with ∥ h∥=1, the estimate of the magnitude of α_(k) in terms of the channel dispersion d is given by

α_(k)=√{square root over ((1−d ²))}  (18)

For the case of weakly dispersive channels wherein d is much smaller compared to 1, α_(k) may be estimated to be 1. For the case of data symbols having constant amplitude as is the case, for example, with MPSK modulation the parameter α_(k) may also be set to 1. In the more general case of the complex valued data symbols with non constant amplitude, in alternative embodiments of the invention, the parameter may be estimated adaptively so as to make the dominant element of the normalized channel impulse response approach 1. An algorithm that minimizes the difference between the dominant element h₀ and 1 is given by

$\begin{matrix} {{{\alpha_{k + 1} = {\alpha_{k} + {\mu_{a}\; \frac{{\hat{h}}_{0,k}}{\alpha_{k}}\left( {1 - {\alpha_{k}{\hat{h}}_{0,k}}} \right)^{*}}}};{k = 0}},1,\ldots} & (19) \end{matrix}$

In equation (19) μ_(a) is some small positive constant and α_(o) may be set to 1.

In various embodiments of the invention, the equalizer filter in the equalizer filter block may be a linear, a decision feedback or a more general nonlinear equalizer filter based on the equalizer parameter vector ŵ _(k) that provides the linear estimate of the data symbol on the basis of the normalized channel output z_(k+K) ₁ .

FIG. 6 shows the block diagram of the BMAEHS 60 of FIG. 1 in one of the various embodiments of the invention. Referring to FIG. 6, the equalizer filter 9 is a linear equalizer filter. Referring to FIG. 6, the output of the channel gain normalizer block 8 also referred to as the normalized channel output z_(k+K) ₁ is input to a cascade of 2N₁ delay elements 401 providing the delayed versions 402 of z_(k+K) ₁ denoted by z_(k+K) ₁ ⁻¹, . . . , z_(k−N) ₁ _(+M) ₁ at their respective outputs. The normalized channel output and its various delayed versions 402 are input to the N wm multipliers 403 wm₁, . . . , wm_(N). The N wm multipliers 403 are inputted by the conjugates 406 of the components 405 of the equalizer parameter vector ŵ_(−N) ₁ _(,k), . . . , ŵ_(0,k), . . . , ŵ_(N) ₁ _(,k). The wm multipliers 403 wm₁, . . . , wm_(N) multiply the normalized channel output and its delayed versions 402 by the respective conjugates 406 of the components of the equalizer parameter vector ŵ _(k) generating the respective products 407 at the outputs of the wm multipliers 403. The outputs of the wm multipliers 407 are inputted to the summer 408 providing a linear estimate 10 â_(k+M) ₁ of the data symbol at the output of the summer 408. The linear estimate 10 â_(k+M) ₁ is input to the decision device 11 that generates the detected symbol 12 a_(k+M) ₁ ^(d), at the output of the decision device 11 based on the decision function Δ( ).

The selection of the decision function Δ( ) depends upon the probability distribution of the data symbols a_(k)=a_(I,k)+j a_(Q,k), with j=√{square root over (−1)}, and with a_(I,k) and a_(Q,k) denoting the real and imaginary components of a_(k). For example, for the case of the discrete type of the probability distribution of the data symbols a_(k) with both the real and imaginary components a_(I,k) and a_(Q,k) of a_(k) taking possible values from the finite sets Σ_(I) and Σ_(Q) respectively and where the components a_(I,k) and a_(Q,k) are statistically independent as is the case, for example, for the MQAM modulated signals, the decision function may be given by (20).

D(â _(I,k) +jâ _(Q,k))=D _(I)(â _(I,k))+jD _(Q)(â _(Q,k))  (20)

In (20) the functions Δ_(I)( ) and Δ_(Q)( ) may be the slicer functions. For the specific case when both the sets Σ_(I) and Σ_(Q) are equal to the set {±1, ±3, . . . , ±(N−1)} A₀ for some integer N and positive real number A₀, the two slicer functions Δ_(I)(x) and Δ_(Q)(x) with x real, are identical and are given by (21).

D _(I)(x)=D _(I)(x)=D _(m)(|x|)sgn(x)  (21)

In (21), sgn(x) is the signum function given by

$\begin{matrix} {{{sgn}(x)} = \left\{ \begin{matrix} {{+ 1};{x > 0}} \\ {{- 1};{x \leq 0}} \end{matrix} \right.} & (22) \end{matrix}$

And the function D_(m) (|x|) is given by

D _(m)(|x|)=iA ₀ ;V _(t) _(i−1) ≦|x|<V _(t) _(i) ;i=1,2, . . . ,N/2  (23)

In (23), V_(t) _(i) for i=0, 1, . . . , N/2 are the threshold levels given by

$\begin{matrix} {V_{t_{i}} = \left\{ \begin{matrix} {0;{i = 0}} \\ {{2{iA}_{0}};{0 < i < {N/2}}} \\ {\infty;{i = {N/2}}} \end{matrix} \right.} & (24) \end{matrix}$

The decision function described by (20) (24), for example, applies to the case where a_(k) is obtained as a result of MQAM modulation in the digital communication system of FIG. 2, with the number of points in the signal constellation M=N². For other modulation schemes and different probability distributions of the data symbol, other appropriate decision functions may be employed. For the specific case of M=4 corresponding to the QPSK modulation, the decision function in (20) reduces to

D(â _(I,k) +jâ _(Q,k))=sgn(â _(I,k))+jsgn(â _(Q,k))  (25)

For the case of MPSK modulation with M>4, the decision device may comprise of a normalizer that normalizes the complex data symbol by its magnitude with the normalized data symbol operated by the decision function in (20)-(24).

Referring to FIG. 6, the linear estimate 10 â_(k+M) ₁ is subtracted from 12 a_(k+M) ₁ _(d) by the adder 409 providing the error signal 410 e_(k)=(a_(k+M) ₁ ^(d)−â_(k+M) ₁ . The error signal 410 e_(k) is input to the conjugate block 411. The output of the conjugate block 412 e_(k)* is multiplied by a positive scalar 413 μ_(d) in the multiplier 414. The output of the multiplier 414 is input to the N weight correction multipliers 415 wcm₁, . . . , wcm_(N) wherein it multiplies the normalized channel output z_(k+K) ₁ and its various delayed versions 401 z_(k+K) ₁ ⁻¹, . . . , z_(k−N) ₁ _(+M) ₁ generating the N components 419 of μ_(d) w _(k) ^(c) ¹ with the first correction vector w _(k) ^(c) ¹ given by (26).

w _(k) ^(c) ¹ = ψ _(k) e _(k)*; ψ _(k) =[z _(k+K) ₁ , . . . ,z _(k+M) ₁ , . . . ,z _(k+M) ₁ _(−N) ₁ ]^(T);  (26a)

e _(k)(a _(k+M) ₁ ^(d) −â _(k+M) ₁ );k=0,1,  (26b)

Referring to FIG. 6, the second parameter correction vector 452 w _(k) ^(c) ² generated by the MEECGS for LEQ block 50 is multiplied by a positive scalar 453 μ by the multiplier 454. The multiplier output 455 is connected to the vector to scalar converter 460 that provides the N components 461 of the vector μ w _(k) ^(c) ² given μw_(−N) ₁ _(,k) ^(c) ² , . . . , μw_(o,k) ^(c) ² , . . . , μw_(N) ₁ _(,k) ^(c) ² at the output of the vector to scalar converter 460. The outputs 419 of the wcm₁, . . . , wcm_(N) multipliers 415 and the N components 461 of the vector μ w _(k) ^(c) ² are both input to N adders 420 wca₁, . . . , wca_(N). Referring to FIG. 6, the equalizer parameter components ŵ_(−N) ₁ _(,k), . . . , ŵ_(0,k), ŵ_(N) ₁ _(,k) at the outputs of the N delay elements 421 are input to the wca adders 420. The wca adders 420 add the equalizer parameter components 422 ŵ_(−N) ₁ _(,k), . . . , ŵ_(0,k), . . . , ŵ_(N) ₁ _(,k) to the outputs 419 of the wcm₁, . . . , wcm_(N) multipliers and subtract the N components 461 of the vector μ w _(k) ^(c) ² from the results of the addition providing the updated version of the N components 422 of the equalizer parameter vector ŵ _(k+1) at the outputs of the N wca adders 420. The output 422 of the N wca adders 420 are connected to the N delay elements 421. The outputs 405 of the N delay elements 421 are equal to the equalizer parameter vector components 405 ŵ_(−N) ₁ _(,k), . . . , ŵ_(0,k), . . . , ŵ_(N) ₁ _(,k) that are inputted to the N conjugate blocks 404.

Referring to FIG. 6, the detected symbol 12 a_(k+M) ₁ ^(d) is inputted to the channel estimator 440. The normalized channel output 8 z_(k+K) ₁ is input to the delay block 435 that introduces a delay of K₁ samples providing the delayed version 436 z_(k) to the input of the channel estimator 440. The channel estimator 440 provides the estimate of the channel impulse response vector 442 ĥ _(k) at the output of the channel estimator. The equalizer parameters 405 ŵ_(−N) ₁ _(,k), . . . , ŵ_(0,k), . . . , ŵ_(N) ₁ _(,k) are input to the scalar to vector converter 430 that provides the equalizer vector 432 ŵ _(k) to the correction signal generator for LEQ 450. The estimate of the channel impulse response vector 442 ĥ _(k) is input to the correction signal generator 450 that provides the second correction signal vector 452 w _(k) ^(c) ² to the multiplier 454. The correction signal generator 450 convolves the estimate of the channel impulse response vector 442 ĥ _(k) ^(T); with the equalizer parameter vector 432 ŵ _(k) ^(T) to obtain the convolved vector ĝ _(k) ^(T). The difference between the vector ĝ _(k) ^(T) obtained by convolving the estimate of the channel impulse response vector ĥ _(k) ^(T) with the equalizer parameter vector ŵ _(k) ^(T), and the ideal impulse response vector

${\overset{\_}{\delta}}_{K_{1},K_{1}}^{T} = \begin{bmatrix} \underset{\underset{K_{1}}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0} & 1 & \underset{\underset{K_{1}}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0} \end{bmatrix}$

may provide a measure of the modeling error incurred by the equalizer 9. A large deviation of the convolved response ĝ _(k) ^(T) from the ideal impulse response implies a relatively large modeling error. The correction signal generator block generates a correction signal 452 ŵ _(k) ^(c) ² on the basis of the modeling error vector [ δ _(K) ₁ _(,K) ₁ − ĝ _(k)] and inputs the correction signal 452 w _(k) ^(c) ² to the adaptation block 16 for adjusting the equalizer parameter vector ŵ _(k+1) at time k+1.

The equalizer parameter update algorithm implemented in FIG. 6 may be described by (27a, b)

ŵ _(k+1) = ŵ _(k)+μ_(d) ŵ _(k) ^(c) ¹ −μ ŵ _(k) ^(c) ² ;  (27a)

ŵ _(k) ^(c) ¹ = ψ _(k)(a _(k+m) ₁ ^(d) − ŵ _(k) ^(H) ψ _(k))*;k=0,1,  27b)

The first correction signal vector w _(k) ^(c) ¹ may be based on the minimization of the stochastic function |a_(k+M) ₁ ^(d)− w ^(H) ψ _(k)|² with respect to the parameter vector w and is equal to 0.5 times the negative of the gradient of the stochastic function with respect to w. In the absence of the second correction signal vector, the update algorithm in (27a) reduces to the decision directed version of the LMS algorithm.

In various other embodiments of the invention, the first correction signal vector may be derived on the basis of the optimization of the objective function in (28)

$\begin{matrix} {{{J_{k}^{d} = {\sum\limits_{n = 0}^{k}{\lambda_{k - n}^{d}{{{{\overset{\_}{w}}^{H}{\overset{\_}{\psi}}_{n}} - a_{n + M_{1}}^{d}}}^{2}}}};}{\psi_{n} = \left\lbrack {z_{n + K_{1}},\ldots \mspace{14mu},z_{n + M_{1}},\ldots \mspace{14mu},z_{n + M_{1} - N_{1}}} \right\rbrack^{T}}} & (28) \end{matrix}$

with respect to the equalizer parameter vector w and results in the RLS algorithm in (29a, b).

ŵ _(k+1) = ŵ _(k)+μ_(d) R _(k) ψ _(k)(a _(k+M) ₁ _(d) − ŵ _(k) ^(H) ψ _(k))*;  (29a)

R _(k)=λ⁻ [R _(k−1) −R _(k−1) ψ _(k)( ψ _(k) ^(H) R _(k−1) ψ _(k)+λ)⁻¹ ψ _(k) ^(H) R _(k−1) ];k=1,2,  (29b)

In (29b) the matrix R_(k) at time k=0 may be initialized by a diagonal matrix ε_(R)I_(N) for some small positive scalar ε_(R) with I_(N) denoting the (N×N) identity matrix. Based on the optimization of the function J_(k) ^(d), the first correction signal vector w _(k) ^(c) ¹ in (27b) may be modified to arrive at the alternative equalizer parameter vector update algorithm in (30)

ŵ _(k+1) = ŵ _(k)+μ_(d) ŵ _(k) ^(c) ¹ −μ ŵ _(k) ^(c) ²   (30a)

ŵ _(k) ^(c) ¹ =R _(k) ψ _(k)(a _(k+M) ¹ ^(d) − ŵ _(k) ^(H){circumflex over (ψ)}_(k))*;k=0,1,  (30b)

With R_(k) in (30b) updated according to (29b). The algorithm in (30) may result in a faster convergence compared to that in (27).

In various other embodiments of the invention the first correction signal vector w _(k) ^(c) ¹ may be based on the one of the quantized state algorithms such as the QS1 algorithm given by

ŵ _(k) ^(c) ¹ =R _(k) ψ _(k) ^(q)(a _(k+M) ¹ ^(d) − ŵ _(k) ^(H) ψ _(k))*  (31a)

R _(k) ^(q)=λ⁻¹ [R _(k−1) ^(q) −R _(k−1) ^(q) ψ _(k) ^(q)( ψ _(k) ^(H) R _(k−1) ^(q) ψ _(k) ^(q)+λ)⁻¹ ψ _(k) ^(H) R _(k−1) ^(q) ];k=0,1,  (31b)

The vector ψ _(k) ^(q), is obtained by replacing both the real and imaginary components of the various components of the vector ψ _(k) with the 1 bit quantized versions. The i^(th) component of ψ _(k) ^(q) is given by (31c).

ψ_(k,i) ^(q) =sgn(Re(ψ_(k,i)))+jsgn(Im(ψ_(k,i)));j=√{square root over (−1)};i=−N₁, . . . ,0, . . . ,N ₁  (31c)

In (31c) sgn(x) for x real is the signum function defined in (22), and Re(z) and Im(z) denote the real and imaginary components of z for any complex variable z.

Referring to FIG. 1, the output z_(k), for any integer k, of the channel gain normalizer block 7 in FIG. 1 may be expressed as

z _(k) =y _(k) +n _(k);  (32a)

$\begin{matrix} {{{y_{k} = {\sum\limits_{i = {- M_{1}}}^{M_{1}}{h_{i}^{*}a_{k - i}}}};{k = 0}},1,\ldots} & \left( {32b} \right) \end{matrix}$

where h_(i), −M₁, . . . ,0, . . . , M₁, are the components of the channel impulse response vector h related to the vector h ^(c) via the channel gain G_(k) ^(m) shown in FIG. 5. From (32a,b) an exponentially data weighted least squares algorithm for the estimate of the channel impulse response vector ĥ _(k) may be obtained by minimizing the optimization index θ_(1,k) with respect to h where

$\begin{matrix} {{{J_{1,k} = {\sum\limits_{m = 0}^{k}{\lambda^{k - m}{{z_{m} - {{\overset{\_}{h}}^{H}{\overset{\_}{x}}_{m}}}}^{2}}}};}{{{{\overset{\_}{x}}_{m}\left\lbrack {a_{m + M_{1}},{\ldots \mspace{14mu} a_{m}},{\ldots \mspace{14mu} a_{m + M_{1}}}} \right\rbrack}^{T};{k = 0}},1,\ldots}} & (33) \end{matrix}$

In (33) the exponential data weighting coefficient λ is a constant taking values in the interval 0 λ≦1. The gradient of θ_(1,k) with respect to h is evaluated as

$\begin{matrix} {\frac{\partial J_{1,k}}{\partial\overset{\_}{h}} = {{\sum\limits_{m = 0}^{k}{\lambda^{k - m}{\overset{\_}{x}}_{m}z_{m}}} - {\sum\limits_{m = 0}^{k}{\lambda^{k - m}{\overset{\_}{h}}^{H}{\overset{\_}{x}}_{m}{\overset{\_}{x}}_{m}^{H}}}}} & (34) \end{matrix}$

The exponential data weighted least squares (LS) algorithm is obtained by setting the gradient in (34) equal to zero and is given by

$\begin{matrix} {{\overset{\hat{\_}}{h}}_{k} = {P_{k}\left( {\sum\limits_{m = 0}^{k}{\lambda^{k - m}{\overset{\_}{x}}_{m}z_{m}^{*}}} \right)}} & \left( {35a} \right) \\ {P_{k} = \left\lbrack {P_{k - 1}^{- 1} + {\sum\limits_{m = 0}^{k}{\lambda^{k - m}{\overset{\_}{x}}_{m}{\overset{\_}{x}}_{m}^{H}}}} \right\rbrack^{- 1}} & \left( {35b} \right) \end{matrix}$

In (35b) P⁻¹ ⁻¹=εI for some small positive scalars ε and with I denoting the identity matrix. Alternatively, the use of the matrix inversion lemma yields the following recursive least squares (RLS) algorithm

ĥ _(k) = ĥ _(k−1) +P _(k) x _(k) e _(k) *;e _(k)=(z _(k) −{circumflex over (z)} _(k));{circumflex over (z)} _(k) = ĥ _(k−1) ^(H) x _(k);  (36a)

P _(k)=λ⁻¹ [P _(k−1) −P _(k−1) x _(k)(λ+ x _(K) ^(H) P _(k01) x _(k))⁻¹ x _(k) ^(H) P _(k−1) ];k=0,1  (36)

In(36) the estimate ĥ ⁻¹ may be set to some a-priori estimate, for example, ĥ ⁻¹=[0 . . . 010 . . . 0]^(T) with P⁻¹ selected as in (35b). In one of the preferred embodiment of the invention the RLS algorithm (36) is used for the estimation of h.

In an alternative embodiment of the invention, an exponentially data weighted Kalman filter algorithm may be used. The Kalman filter minimizes the conditional error variance in the estimate of the channel impulse response given by E[∥ h− ĥ∥²/z₀, z₁, . . . , z_(k)], where E denotes the expected value operator. The exponentially data weighted Kalman filter algorithm is given by

ĥ _(k) = ĥ _(k−1) +K _(k)(z _(k) − ĥ _(k−1) ^(H) x _(k))*  (37a)

K _(k) =P _(k−1) x _(k)( x _(k) ^(H) P _(k−1) x _(k) +λr _(k))⁻¹  (37b)

P _(k)=λ⁻¹ [P _(k11) −P _(k−1) x _(k)( x _(k) ^(H) P _(k−1) x _(k) +λr _(k))⁻¹ x _(k) ^(H) P _(k−1)]  (37c)

The equations (37a)-(37c) may be initialized at k=0 with similar initialization as for the RLS algorithm of (36). Equations (37a) and (37b) may be combined into the following equivalent form

ĥ _(k) = ĥ _(k−1) +P _(k) r _(k) ⁻¹ x _(k)(z _(k) − ĥ _(k−1) ^(H) x _(k))  (37d)

In equations (37b)-(37d), r_(k) r_(k)=2σ² denotes the variance of the noise n_(k) in (32a) equal to the noise n_(k) ^(c) normalized by the modified channel gain G_(k) ^(m).

In another embodiment of the invention, one of the class of quantized state algorithms may be used for the estimation of h. The quantized state algorithms possess advantages in terms of the computational requirements. For example, the quantized state QS 1 algorithm is given by

ĥ _(k) = ĥ _(h-1) +P _(k) ^(q) x _(k) ^(q)(z _(k) − ĥ _(k−1) ^(H) x _(k))  (38a)

P _(k) ^(q)=λ⁻¹ [P _(k−1) ^(q) −P _(k−1) ^(q) x _(k) ^(q)( x _(k) ^(H) P _(k−1) ^(q) x _(k) ^(q)+λ)⁻¹ x _(k) ^(H) P _(k−1) ^(q) ];k=0,1  (38b)

where in (38) x ^(q) is obtained from x by replacing both the real and imaginary components of each component of x by their respective signs taking values +1 or −1. Multiplication of x ^(q) by the matrix P^(q) in (38b) requires only additions instead of both additions and multiplications, thus significantly reducing the computational requirements. Referring to FIG. 1, in the blind mode equalizer system 80, the channel input a_(k) appearing in the state vector x _(k) in (34)-(38) is replaced by the detected symbol a_(k) ^(d). The state vector x _(k) in the equations (34)-(38) is replaced by its estimate given by

{circumflex over (x)} _(k) =[a _(k+M) ₁ ^(d) , . . . ,a _(k) ^(d) , . . . ,a _(k−M) ₁ ^(d)]^(T)  (39)

The resulting modified RLS algorithm is given by

ĥ _(k) = ĥ _(k−1) +P _(k) {circumflex over (x)} _(k)(z _(k) − ĥ _(k−1) ^(H) {circumflex over (x)} _(k))*  (40a)

P _(k)=λ⁻¹ [P _(k11) −P _(k−1) {circumflex over (x)} _(k)(λ+ {circumflex over (x)} _(k) ^(H) P _(k−1) {circumflex over (x)} _(k))⁻¹ {circumflex over (x)} _(k) ^(H) P _(k−1) ];k=0,1,  (40b)

In one of the various preferred embodiments of the invention, the modified RLS algorithm (40a)-(40b) is used for the estimation of the channel impulse response h. In various alternative embodiments the Kalman filter algorithms in (37) or the quantized state algorithm in (38) with the state vector x _(k) replaced with the estimate {circumflex over (x)} _(k) may be used for the estimation of the channel impulse response h.

FIG. 7 shows the block diagram of the channel estimator block 440 of FIG. 6. Referring to FIG. 7, the detected symbol 12 a_(k+M) ₁ ^(d) from the output of the decision device 11 is input to a cascade of 2M₁ delay elements 510 generating the 2M₁ delayed versions 512 a_(k+M) ₁ ⁻¹ ^(d), . . . , a_(k−M) ₁ ^(d) at the outputs of the delay elements. The detected symbol a_(k−M) ₁ ^(d) and its 2M₁ delayed versions 512 a_(k+M) ₁ ^(d)−1, . . . ,a_(k−M) ₁ ^(d) are input to the M=2M₁+1 hm multipliers 514 hm, . . . , hm_(M). The M hm multipliers 514 are inputted with the conjugates 518 of the M components 516 ĥ_(−M) ₁ _(,k−1), . . . , ĥ_(0,k−1), . . . , ĥ_(M) ₁ _(,k−1) of the channel impulse response vector ĥ _(k−1) provided by the conjugate blocks 517. The M hm multipliers 514 multiply the detected symbols a_(k+M) ₁ ^(d), . . . , a_(k−M) ₁ ^(d) by the respective components ĥ_(−M) ₁ _(,k−1), . . . ,ĥ_(0,k−1), . . . , ĥ_(M) ₁ _(,k−1) of the channel impulse response vector ĥ _(k−1). The outputs of the M hm multipliers 514 are inputted to the summer 575 that provides the sum of the inputs representing the predicted value 576 {circumflex over (z)}_(k) of the normalized channel output z_(k) at the summer output 576. The normalized channel output 436 z_(k) and the predicted value 576 {circumflex over (z)}_(k) are input to the adder 578 that provides the prediction error signal 579 e_(k) ^(h)=z_(k)−{circumflex over (z)}_(k) at the output of the adder. The error signal 579 e_(k) ^(h) is inputted to the conjugate block 580, the output of 581 of the conjugate block 580 is multiplied by a positive scalar μ_(h) in the multiplier 583. The output 584 of the multiplier 583 is input to the M weight correction multipliers 526 hcm₁, . . . , hcm_(N) wherein e_(k) ^(h)* multiplies the M components K_(−M) ₁ _(,k), . . . , K_(0,k), . . . , K_(M) ₁ _(,k) of the gain vector 548 K_(k) provided by the vector to scalar converter 560. The outputs of the hcm₁, . . . , hcm_(M) multipliers 526 are input to the N hca adders 518 hca₁, . . . , hca_(M).

Referring to FIG. 7, the M hca adders 518 are inputted with the M components ĥ_(−M) ₁ _(,k−1), . . . ,ĥ_(0,k−1), . . . ,ĥ_(M) ₁ _(,k−1) of the channel impulse response vector ĥ _(k−1) at the outputs of the M delay elements 520 and with the outputs 522 of the M hcm multipliers 526. The hca adders 518 add the M channel impulse response vector components ĥ_(−M) ₁ _(,k−1), . . . ,ĥ_(0,k−1), . . . ,ĥ_(M) ₁ _(,k−1) to the corresponding M outputs 522 of the hcm₁, . . . , hcm_(M) multipliers 526 providing the updated version of the M components of the channel impulse response vector ĥ _(k) at the outputs of the M hca adders 518. The outputs 524 of the M hca adders 518 are connected to the inputs of the M delay elements 520 with the outputs of the delay elements connected to the M conjugate blocks 517. The estimate of the channel impulse response vector may be initialized at k=−1 by the vector δ _(M) ₁ _(,M) ₁ =[0 . . . 010 . . . 0]^(T).

Referring to FIG. 7, the detected symbol 12 a_(k+M) ₁ ^(d) and its various delayed versions 512 a_(k+M) ₁ ⁻¹ ^(d), . . . ,a_(k−M) ₁ ^(d) are input to the scalar to vector converter 530 providing the channel state vector 532 {circumflex over (x)} _(k)=[a_(k+M) ₁ ^(d), . . . ,a_(k−M) ₁ ^(d)]^(T) at the output of the scalar to vector converter 530. Referring to FIG. 7, the channel state vector 530 {circumflex over (x)} _(k) is input to the gain update block 550 that provides the gain vector 548 K(k) to the vector to scalar converter 560. Referring to FIG. 7, the channel state vector 530 {circumflex over (x)} _(k) and the matrix 545 P_(k−1) are input to the matrix P_(k) update block 542 that evaluates the updated matrix 543 P_(k) according to equation (36b) and provides the updated matrix 543 P_(k) to the delay 544. The output 545 of the delay 544 equal to P_(k−1) is inputted to the matrix P_(k) update block 542. The matrix P_(k) update block 542 is initialized with input 546 P⁻¹=εI_(M), where ε is some positive number and I_(M) is the M×M identity matrix. The matrix 543 P_(k) and the channel state vector 532 {circumflex over (x)} _(k) are input to the matrix multiplier 541 that provides the gain vector 548 K_(k)=P_(k) {circumflex over (x)} _(k) at the output. The gain vector 548 K_(k) is inputted to the vector to scalar converter 560.

With the channel impulse response vector h ^(T)=[h⁻ ₁ . . . h⁻¹ h₀ h₁ . . . h_(M) ₁ ] of length M=2M₁+1, and w ^(T)=[w_(−N) ₁ , . . . w⁻¹, w₀, w₁, . . . , w_(N) ₁ ] of length N=2N₁+1, the composite system comprised of the cascade of the channel and the equalizer has an impulse response g ^(T) of length K=N+M−1 with K=2K₁+1, K₁=N₁+M₁−1

g=[g _(−K) ₁ . . . g ⁻¹ g ₀ g ₁ . . . g _(k) ₁ ]^(T)  (41)

The elements of the vector k are obtained by the discrete convolution of the sequences {h_(−M) ₁ . . . , h⁻¹, h₀, h₁, . . . , h_(M) ₁ } and {w_(−N) ₁, . . . , w⁻¹, w₀, w₁, . . . , w_(N) ₁ }. For simplicity of notations, the sequences are also represented as vectors h and w respectively with the similar notations for the other sequences. The convolution operation can also be expressed in the following matrix vector form

g=H w   (42)

With N₁>M₁ as is usually the case, the K×N matrix H in (42) may be written in the following partitioned form

$\begin{matrix} {H = \begin{bmatrix} \begin{matrix} H_{1} & O_{M \times {({N - M})}} \end{matrix} \\ \begin{matrix} H_{3} \\ \begin{matrix} O_{M \times {({N - M})}} & H_{2} \end{matrix} \end{matrix} \end{bmatrix}} & (43) \end{matrix}$

In (43) O_(M×(N-M)) denotes M×(N-M) matrix with all its elements equal to zero and

$\begin{matrix} {H_{1} = \begin{bmatrix} h_{- M_{1}} & 0 & 0 & \ldots & 0 \\ h_{{- M_{1}} + 1} & h_{- M_{1}} & 0 & \ldots & 0 \\ \; & \ldots & \ldots & \ldots & \; \\ h_{M_{1}} & \ldots & h_{0} & \ldots & h_{- M_{1}} \end{bmatrix}} & \left( {44a} \right) \\ {H_{2} = \begin{bmatrix} h_{M_{1}} & \ldots & h_{0} & \ldots & h_{- M_{1}} \\ \; & \ldots & h_{0} & \ldots & h_{{- M_{1}} + 1} \\ \; & \ldots & \ldots & \ldots & \; \\ 0 & 0 & \ldots & 0 & h_{M_{1}} \end{bmatrix}} & \left( {44b} \right) \\ {H_{3} = \begin{bmatrix} 0 & h_{M_{1}} & \ldots & h_{0} & \ldots & h_{- M_{1}} & \overset{\overset{N - M - 1}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0} \\ \begin{matrix} 0 & 0 \end{matrix} & h_{M_{1}} & \ldots & h_{0} & \ldots & h_{- M_{1}} & {0\mspace{14mu} \ldots \mspace{14mu} 0} \\ \; & \; & \ldots & \ldots & \ldots & \; & \; \\ \underset{\underset{N - M - 1}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0} & h_{M_{1}} & \ldots & h_{0} & \ldots & h_{- M_{1}} & 0 \end{bmatrix}} & \left( {44c} \right) \\ {H = \begin{bmatrix} \begin{matrix} h_{- M_{1}} & 0 & \ldots & \ldots & \ldots & \ldots & 0 \end{matrix} \\ \begin{matrix} h_{{- M_{1}} + 1} & h_{- M_{1}} & 0 & \ldots & \ldots & 0 \\ \ldots & \ldots & \ldots & \ldots & \ldots & \ldots \end{matrix} \\ \begin{matrix} \underset{\underset{N_{1} - M_{1}}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0} & h_{M_{1}} & \ldots & h_{0} & \ldots & h_{- M_{1}} & \underset{\underset{N_{1} - M_{1}}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0} \end{matrix} \\ \begin{matrix} \ldots & \ldots & \ldots & \ldots & \ldots & \ldots \\ 0 & 0 & \ldots & 0 & h_{M_{1}} & h_{M_{1} - 1} \\ 0 & 0 & \ldots & 0 & 0 & h_{M_{1}} \end{matrix} \end{bmatrix}} & \left( {44d} \right) \end{matrix}$

The matrix H in (44d) can be appropriately modified for the case of N₁<M₁. For the case of known channel impulse response h, the equalizer parameter vector w can be selected so that the impulse response of the composite system g ^(T) given by (42) is equal δ _(K) ₁ _(,K) ₁ to which is defined for any pair of positive integers K₁, K₁′ as

$\begin{matrix} {{\overset{\_}{\delta}}_{K_{1},K_{1}^{\prime}} = \begin{bmatrix} \underset{\underset{K_{1}}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0} & 1 & \underset{\underset{K_{1}^{\prime}}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0} \end{bmatrix}^{T}} & (45) \end{matrix}$

For the case of non singular matrix H, this can be achieved by the selection of w by

w=H ⁻¹ δ; δ= δ _(K) ₁ _(,K) ₁   (46)

However, for the more general case the equalizer parameter vector w may be selected so as to minimize some measure of the difference between g and the unit vectors δ. Thus the objective function J_(L) _(i) to be minimized is given by

J _(L) _(i) =∥H w− δ∥ _(L) _(i)   (47)

where ∥ ∥_(L) _(i) denotes the L_(i) norm. For example, the L₁ norm is given by

$\sum\limits_{j = {- K_{1}}}^{K_{1}}{\left( {g_{j} - \delta_{j}} \right)}$

with δ_(j) denoting the jth component of the vector δ. The L_(∞) norm is given

$\max\limits_{j}{{\left( {g_{j} - \delta_{j}} \right)}.}$

Computationally the Euclidean norm L₂ is most convenient and is given by

$\begin{matrix} {= {J_{2} = {J_{L_{2}} = {{\sum\limits_{j = {- K_{1}}}^{K_{1}}{\left( {{H\overset{\_}{w}} - \overset{\_}{\delta}} \right)_{j}}^{2}} = {\sum\limits_{j = {- K_{1}}}^{K_{1}}{\left( {g_{j} - \delta_{j}} \right)}^{2}}}}}} & (48) \end{matrix}$

Equivalently the optimization function in (48) may be expressed in the following equivalent form

J ₂=(H w − δ)^(H)(H w − δ)  (49)

The gradient of θ₂ with respect to the equalizer parameter vector w is evaluated as

θJ ₂ /θ w=H ^(T)(H w − δ)*  (50)

An iterative algorithm to minimize the objective function θ₂ is given by

ŵ _(k+1) = ŵ _(k) −μH ^(T)( ĝ _(k)− δ)*; ĝ _(k) =H ŵ _(k) ;k=0,1,  (51)

with an appropriate initialization for ŵ ₀. As an example, ŵ ₀ may be selected equal to the unit vector δ _(N) ₁ _(,N) ₁ of length (2N₁+1).

More generally the optimization function may be selected as

$\begin{matrix} {J_{2} = {{{\kappa_{1}J_{L_{2\;}}} + {\kappa_{2}J_{L_{4}}}} = {{\kappa_{1}{\sum\limits_{j = {- K_{1}}}^{K_{1}}{\left( {g_{j} - \delta_{j}} \right)}^{2}}} + {\kappa_{2}{\sum\limits_{j = {- K_{1}}}^{K_{1}}{\left( {g_{j} - \delta_{j}} \right)}^{4}}}}}} & (52) \end{matrix}$

In (52) κ₁ and κ₂ are some positive constants determining the relative weights assigned to J_(L) ₂ and J_(L) ₄ respectively. Differentiation of J_(L) ₄ with respect to the equalizer parameter w_(i) yields

$\begin{matrix} {\frac{\partial J_{L_{4}}}{\partial w_{i}} = {{2{\sum\limits_{j = {- K_{1}}}^{K_{1}}{{\left( {g_{j} - \delta_{j}} \right)}^{2}\left( {g_{j} - \delta_{j}} \right)^{*}\frac{\partial g_{j}}{\partial w_{i}}}}} = {2{\sum\limits_{j = {- K_{1}}}^{K_{1}}{H_{ji}{\left( {g_{j} - \delta_{j}} \right)}^{2}\left( {g_{j} - \delta_{j}} \right)^{*}}}}}} & (53) \end{matrix}$

From (53), the gradient vector of J_(L) ₄ with respect to the equalizer parameter vector w is given by

$\begin{matrix} {\frac{\partial J_{L_{4}}}{\partial\overset{\_}{w}} = {{2{H^{T}\left\lbrack {{\left( {\overset{\_}{g} - \overset{\_}{\delta}} \right)}^{2}{\bullet \left( {\overset{\_}{g} - \overset{\_}{\delta}} \right)}^{*}} \right\rbrack}} \equiv {2H^{T}{\overset{\_}{g}}^{c}}}} & (54) \end{matrix}$

In (54) the n^(th) power of any vector x for any real n is defined as taking the component wise n^(th) power of the elements of the vector x, | x| denotes component wise absolute value and □ denotes component wise multiplication, and thus the result of vector operations in (54) is a vector of the same length as that of x for any vector x. From (54) a more general version of the iterative algorithm to minimize the objective function in (52) is given by

ŵ _(k+1) = ŵ _(k) −μH ^(T)[( ĝ _(k)− δ)*+κ|( ĝ _(k)−δ|²□( ĝ _(k)− δ)*]; ĝ _(k) =H ŵ _(k)  (55a)

ŵ _(k+1) = ŵ _(k) −μH ^(T){[ 1+κ|( ĝ _(k)−δ)|²]□( ĝ _(k)− δ)*}; ĝ _(k) =H ŵ _(k) ;k=0,1,  (55b)

In (55b) 1 denotes a vector with all its elements equal to 1 and its length equal to that of ĝ _(k). In (55a,b) μ and κ are some positive constants that are sufficiently small to ensure the convergence of the algorithm in (55).

In one of the various embodiments of the BMAEHS equalizer of the invention, the second correction signal vector ŵ _(k) ^(c) ² is selected as

ŵ _(k) ^(c) ² =H ^(T){[ 1+κ|( ĝ− δ| ²]□( ĝ _(k)− δ)*}; ĝ _(k) =H ŵ _(k) ;k=0,1,  (56)

In (56) Ĥ_(k) is given by (44d) with h_(i) replaced by its estimate ĥ_(i,k) for i=−M₁, . . . , 0, . . . , M₁. In various other embodiments of the invention, the second correction signal vector ŵ _(k) ^(c) ² may be obtained from the optimization of the θ₂ in (52) and given by

ŵ _(k) ^(c) ² =Ĥ _(k) ^(T)[( ĝ _(k)− δ)+κ|( ĝ _(k)− δ)|²□( ĝ _(k)− δ)*]; ĝ _(k) =Ĥ _(k) ŵ _(k) ;k=0,1  (57)

FIG. 8 shows the block diagram of the correction signal generator 450 of FIG. 6 that generates the second correction signal vector 452 ŵ _(k) ^(c) ² according to (51). Referring to FIG. 8, the estimate of the channel impulse response vector 442 ĥ _(k) is input to the correction signal generator 450. As shown in the FIG. 8, the channel impulse response vector 442 ĥ _(k) is input to the matrix Ĥ_(k) collator 620 that forms matrix 622 Ĥ_(k) according to equation (44) with h_(i) replaced by for ĥ_(i)=M₁, . . . 0 . . . , M₁. The matrix 622 Ĥ_(k) and the equalizer parameter vector 432 ŵ _(k) are input to the matrix multiplier 624 that provides the product ĝ _(k)=Ĥ_(k) ŵ _(k) at the matrix multiplier output 626. The product 626 ĝ _(k) and the vector 610 δ _(K) ₁ _(,K) ₁ =[0 . . . 010 . . . 0] are inputted to the adder 630 that provides the difference 632 ( ĝ _(k)− {circumflex over (δ)} _(K) ₁ _(,K) ₁ ) to the conjugate block 635. The output 638 of the conjugate block 635 is inputted to the matrix multiplier 640. The matrix 622 Ĥ_(k) is input to the transpose block 642 that provides the matrix 644 Ĥ_(k) ^(T) at the output. The matrix 644 Ĥ_(k) ^(T) is inputted to the matrix multiplier 640 that multiplies the matrix 644 Ĥ_(k) ^(T) by 638 ( ĝ _(k)− δ _(K) ₁ _(,K) ₁ )* generating the second correction vector 452 w _(k) ^(c) ² at the matrix multiplier output.

From the definition of the matrix H in (44), the vector ĝ _(k) in (51) and (55) can also be obtained by the convolution of the channel impulse response h with the equalizer parameter vector ŵ _(k). Similarly the pre multiplication by H^(T) in (51) can be evaluated by the convolution of h ^(I) with ( ĝ _(k)− δ) and discarding (2M−2) elements from the resulting vector of size K+M−1=N+2M−2, more specifically (M−1) elements are discarded from each end of the resulting vector, where h ^(I) is the vector obtained by reversing the order of the elements in h, i.e.,

h ^(I) =[h _(M) ₁ . . . h ₁ h ₀ h ⁻¹ . . . h _(−M) ₁ ]^(T)  (58)

An equivalent form for the update of the equalizer parameter vector ŵ _(k) is given by

{circumflex over (w)} _(k+1)= {circumflex over (w)} _(k)−μTr{ h ^(I)

[ h

{circumflex over (w)} _(k)− δ]*}  (59a)

{circumflex over (w)} _(k+1)= {circumflex over (w)} _(k)−μTr{ h ^(I)*

h

{circumflex over (w)} _(k)}+μ h ^(Ie) ;k=0,1,  (59b)

In (59) the operator Tr denotes the truncation of the vector to length N by deleting (M−1) elements from each side of the vector appearing in its argument. In (59b) h ^(Ie) is the vector obtained from h ^(I). by appending (N₁−M₁) zeros to each side of h ^(I) with h ^(Ie)=[0 . . . 0 h ^(IT)0 . . . 0]^(T). Similarly the convolution version of the algorithm in (55) is given by

{circumflex over (w)} _(k−1)= {circumflex over (w)} _(k)−μTr{ h ^(I)

[( {circumflex over (g)} _(k)− δ)*+κ {circumflex over (g)} ^(c)]}  (60a)

{circumflex over (g)} _(k)= h

ŵ _(k); {circumflex over (g)} _(k) ^(c)=|( {circumflex over (g)} _(k)− δ)|²□( {circumflex over (g)} _(k)− δ)*;k=0,1,  (60b)

In various alternative embodiments of the invention, second correction signal vector w _(k) ^(c) ² may be generated by (61) as

{circumflex over (w)} _(k) ^(c) ² =Tr{ {circumflex over (h)} _(k) ^(I)

[( {circumflex over (g)} _(k)− δ)*+κ {circumflex over (g)} ^(c)]};  (61a)

{circumflex over (g)} _(k)= {circumflex over (h)} _(k)

ŵ _(k); {circumflex over (g)} ^(c)=|( {circumflex over (g)} _(k)− δ)|²□( {circumflex over (g)} _(k)− δ)*;k=0,1,  (61b)

In (61a) ĥ _(k) ^(I) is obtained from (58) after replacing h_(i) with ĥ_(i,k) for i=M₁, . . . ,0, M₁.

In order to minimize the impact of the equalizer on the input noise variance 2 σ², a term proportional to ∥ w∥² may be added to the optimization function in (52) with the resulting objective function given by

$\begin{matrix} {J_{2} = {{\kappa_{1}{\sum\limits_{j = {- K_{1}}}^{K_{1}}{\left( {g_{j} - \delta_{j}} \right)}^{2}}} + {\kappa_{2}{\sum\limits_{j = {- K_{1}}}^{K_{1}}{\left( {g_{j} - \delta_{j}} \right)}^{4}}} + {\kappa_{3}2\sigma^{2}{\overset{\_}{w}}^{2}}}} & (62) \end{matrix}$

In (62) the product 2σ²∥ w∥² is the noise variance at the equalizer output and κ₃ determines the relative weighting given to power of the residual inter symbol interference (ISI) I_(s). The ISI power is proportional to the summation in the first term on the right hand side of (61) and is given by

$\begin{matrix} {\sigma_{I}^{2} = {{E\left\lbrack {I_{s}}^{2} \right\rbrack} = {{E\left\lbrack {a_{k}}^{2} \right\rbrack}{\sum\limits_{j = {- K_{1}}}^{K_{1}}{\left( {g_{j} - \delta_{j}} \right)}^{2}}}}} & (63) \end{matrix}$

The power of the total distortion at the output of the equalizer is given by

$\begin{matrix} {\sigma_{t}^{2} = {{{E\left\lbrack {I_{s}}^{2} \right\rbrack} + {2\sigma^{2}{\overset{\_}{w}}^{2}}} = {{{E\left\lbrack {a_{k}}^{2} \right\rbrack}{\sum\limits_{j = {- K_{1}}}^{K_{1}}{\left( {g_{j} - \delta_{j}} \right)}^{2}}} + {2\sigma^{2}{\overset{\_}{w}}^{2}}}}} & (64) \end{matrix}$

and to minimize the total distortion σ_(t) ², the constants κ₁ and κ₃ are related by κ₁=E[|a_(k)|²]κ₃. With the modified optimization function in (62), the iterative algorithm in (60) is modified to

{circumflex over (w)} _(k−1)= {circumflex over (w)} _(k)−μTr{ h ^(I)

[( {circumflex over (g)} _(k)− δ)*+κ {circumflex over (g)} _(k) ^(c)]}−μ₀ {circumflex over (w)} _(k)*  (65a)

ĝ _(k)= h

ŵ _(k); {circumflex over (g)} ^(c)=|( {circumflex over (g)} _(k)− δ)|²□( {circumflex over (g)} _(k)− δ)*;k=0,1,  (65b)

In (65) the parameter μ₀ with 0≦μ₀<1, is determined by the relative weight κ₃. In various alternative embodiments of the invention, the second correction signal vector w _(k) ^(c) ² may be generated by (66) as

{circumflex over (w)} _(k) ^(c) ² =Tr{ {circumflex over (h)} _(k) ^(I)

[( {circumflex over (g)} _(k)− δ)*+κ {circumflex over (g)} _(k) ^(c)]}+(μ₀/μ) {circumflex over (w)} _(k)*  (66)

In (66) ĝ _(k) and ĝ _(k) ^(c) are given by (61b).

The convolution operation in the iterative algorithms (59), (60) and (65) can be performed equivalently in terms of the discrete Fourier transform (DFT) or the fast Fourier transform (FFT) operations. The FFT operation results in a circular convolution, hence for proper convolution operation the individual vectors to be convolved are zero padded with an appropriate number of zeros. Also the FFT of h ^(I) can be related to the FFT of h if a zero is appended at the beginning of the vector h. Therefore, a vector h ^(e) of length (N+M+2) is defined by

$\begin{matrix} {{\overset{\_}{h}}^{e} = \left\lbrack {0h_{- M_{1}}\mspace{14mu} \ldots \mspace{14mu} h_{- 1}h_{0}h_{1}\mspace{14mu} \ldots \mspace{14mu} h_{M_{1}}\underset{\underset{N + 1}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0}}\; \right\rbrack^{T}} & (67) \end{matrix}$

Similarly a vector ŵ _(k) ^(e) of length (N+M+2) is defined as

$\begin{matrix} {{\hat{\overset{\_}{w}}}_{k}^{e} = \left\lbrack {{\hat{w}}_{- N_{1}}\mspace{14mu} \ldots \mspace{14mu} {\hat{w}}_{- 1}{\hat{w}}_{0}{\hat{w}}_{1}\mspace{14mu} \ldots \mspace{14mu} {\hat{w}}_{N_{1}}\underset{\underset{M + 2}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0}} \right\rbrack^{T}} & (68) \end{matrix}$

For the sake of notational simplification, the suffix k denoting the time index has been dropped from the elements of the vector ŵ _(k) ^(e). Let

h ^(eF) =F( h ^(e)); {circumflex over (w)} _(k) ^(eF) =F( {circumflex over (w)} _(k) ^(e))  (69)

where in (69), the operator Φ denotes the (N+M+2) point discrete Fourier transform of its argument. For any vector ξ of size N, its DFT is given by

ξ ^(F)=Γ_(N) Γ  (70a)

Where δ_(N) is the N×N matrix given by

$\begin{matrix} {\Gamma_{N} = \begin{bmatrix} \gamma_{0,0} & \gamma_{0,1} & \ldots & \gamma_{0,{N - 1}} \\ \gamma_{1,0} & \gamma_{1,1} & \ldots & \gamma_{1,{N - 1}} \\ \ldots & \ldots & \ldots & \ldots \\ \gamma_{{N - 1},0} & \gamma_{{N - 1},1} & \ldots & \gamma_{{N - 1},{N - 1}} \end{bmatrix}} & \left( {70b} \right) \\ {{{\gamma_{m,n} = {\exp \left\lbrack {{- {j2}}\; \pi \; {{mn}/N}} \right\rbrack}};{j = \sqrt{- 1}};m},{n = 0},1,\ldots \mspace{14mu},{N - 1}} & \left( {70c} \right) \end{matrix}$

The discrete Fourier transform in (70) can be implemented by the fast Fourier transform algorithm resulting in significant reduction in the number of required arithmetic operations. Defining

{circumflex over (g)} _(k) ^(eF)= h ^(eF)□ {circumflex over (w)} _(k) ^(eF)  (71)

with □ denoting the component wise multiplication, then the inverse discrete Fourier transform (IDFT) of ĝ _(k) ^(eF) is given by

$\begin{matrix} \begin{matrix} {{F^{- 1}\left( {\hat{\overset{\_}{g}}}_{k}^{eF} \right)} = {\Gamma_{({K + 3})}^{*}{\hat{\overset{\_}{g}}}_{k}^{eF}}} \\ {= \left\lbrack {0{\hat{g}}_{- K_{1}}\mspace{14mu} \ldots \mspace{14mu} {\hat{g}}_{- 1}{\hat{g}}_{0}{\hat{g}}_{1}\mspace{14mu} \ldots \mspace{11mu} {\hat{g}}_{K_{1}}00} \right\rbrack^{T}} \\ {= \left\lbrack {0{\hat{\overset{\_}{g}}}_{k}00} \right\rbrack^{T}} \end{matrix} & (72) \end{matrix}$

The inverse DFT of ( h ^(eF))*, where * denotes complex conjugate, is given by

$\begin{matrix} \begin{matrix} {{F^{- 1}\left\lbrack \left( {\overset{\_}{h}}^{eF} \right)^{*} \right\rbrack} = \left\lbrack {\underset{\underset{({N + 2})}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0}h_{M_{1}}\mspace{14mu} \ldots \mspace{14mu} h_{1}h_{0}h_{- 1}\mspace{14mu} \ldots \mspace{14mu} h_{- M_{1}}} \right\rbrack^{H}} \\ {= \left\lbrack {\underset{\underset{({N + 2})}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0}\left( {\overset{\_}{h}}^{I} \right)^{H}} \right\rbrack^{T}} \end{matrix} & (73) \end{matrix}$

From (71)-(73) the IDFT of the product of ĝ _(k) ^(eF) and ( h ^(eF)) is

$\begin{matrix} \begin{matrix} {{\hat{\overset{\_}{w}}}^{pe} \equiv \left\lbrack {F^{- 1}\left\{ {{\overset{\_}{h}}^{eF}\bullet \; {\hat{\overset{\_}{w}}}_{k}^{eF}\bullet \; \left( {\overset{\_}{h}}^{eF} \right)^{*}} \right\}} \right\rbrack^{*}} \\ {= \left\lbrack {{\hat{w}}_{- N_{1\;}}^{p}\mspace{14mu} \ldots \mspace{14mu} {\hat{w}}_{- 1}^{p}{\hat{w}}_{0}^{p}{\hat{w}}_{1}^{p}\mspace{14mu} \ldots \mspace{14mu} {\hat{w}}_{N_{1}}^{p}\underset{\underset{M + 2}{}}{{**\mspace{11mu} \ldots}\mspace{14mu}*}} \right\rbrack^{T}} \end{matrix} & (74) \end{matrix}$

In (74) the symbol * on the right hand side of the equation denotes the elements that are irrelevant and the remaining elements are the same as the ones obtained by the conjugate of the convolution of h, ŵ _(k), and h ^(I) and deleting (M−1) elements from each side of the resulting vector, that is,

Tr ₁( h

{circumflex over (w)} _(k)

h ^(I))*=[{circumflex over (w)}_(−N) ₁ ^(p) . . . {circumflex over (w)}₀ ^(P) . . . {circumflex over (w)}_(N) ₁ ^(P)]^(T)  (75)

The truncation operation Tr₁ comprised of deleting (M−1) elements from each side of the vector in its argument on the left hand side of (75) is equivalent to deleting the last (M+2) elements from the vector on the right hand side of (74). From (74)-(75), a parameter update algorithm equivalent to (65a) for the case of κ=0 is given by

$\begin{matrix} {{{\hat{\overset{\_}{w}}}_{k + 1} = {{\hat{\overset{\_}{w}}}_{k} - {\mu \; {Tr}_{2}\left\{ {F^{- 1}\left\lbrack {{\hat{\overset{\_}{w}}}_{k}^{eF}\bullet {{\overset{\_}{h}}^{eF}}^{2}} \right\rbrack} \right\}^{*}} + {\mu \; {\overset{\_}{h}}^{Ie}} - {\mu_{0}{\hat{\overset{\_}{w}}}_{k}^{*}}}}{where}} & (76) \\ {{\overset{\_}{h}}^{Ie} = \left\lbrack {\underset{\underset{N_{1} - M_{1}}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0}h_{M_{1}}\mspace{14mu} \ldots \mspace{14mu} h_{1}h_{0}h_{- 1}\mspace{14mu} \ldots \mspace{14mu} h_{- M_{1}}\underset{\underset{N_{1} - M_{1}}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0}} \right\rbrack^{T}} & (77) \end{matrix}$

In (76) the truncation operation Tr₂ is comprised of discarding the last (M+2) elements from the vector in its argument and in (77) h ^(Ie) is obtained by appending (N₁-M₁) zeros on both sides of h. The parameter update in (76) requires 2 FFT and 1 IFFT operations.

For the more general case of κ≠0 the parameter update algorithm is given by

$\begin{matrix} {{\overset{\hat{\_}}{w}}_{k + 1} = {{\overset{\hat{\_}}{w}}_{k} - {\mu \; {Tr}_{2}\left\{ {F^{- 1}\left\lbrack {\left( {\overset{\_}{h}}^{eF} \right)^{*}{\bullet \left\lbrack {{\overset{\hat{\_}}{g}}_{k}^{eF} - {\overset{\_}{\delta}}^{F} + {\kappa \; {\overset{\hat{\_}}{g}}_{k}^{cF}}} \right\rbrack}} \right\rbrack} \right\}^{*}} - {\mu_{0}{\overset{\hat{\_}}{w}}_{k}^{*}}}} & \left( {78a} \right) \end{matrix}$

where ĝ _(k) ^(eF) is given by (71) and δ ^(F) is the Fourier transform of δ _(K) ₁ ₊₁,K ₁ ₊₃ given by

$\begin{matrix} {{\overset{\_}{\delta}}_{{K_{1} + 1},{K_{1} + 3}} = \begin{bmatrix} \underset{\underset{K_{1} + 1}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0} & 1 & \underset{\underset{K_{1} + 3}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0} \end{bmatrix}^{T}} & \left( {78b} \right) \end{matrix}$

and is equal to the (K₁+2)^(th) row of the matrix Γ_(K) defined by (70b) with N replaced by (K+3). In (78a) ĝ _(k) ^(cF) denotes the FFT of [0 ĝ _(k) ^(cT)00]^(H). In the FFT based implementation, the second correction signal vector w _(k) ^(c) ² may be given by

$\begin{matrix} {{\overset{\hat{\_}}{w}}_{k}^{c_{2}} = {{{Tr}_{2}\left\{ {F^{- 1}\left\lbrack {{\overset{\hat{\_}}{w}}_{k}^{eF}\bullet {{\overset{\hat{\_}}{h}}_{k\;}^{eF}}^{2}} \right\rbrack} \right\}^{*}} - {\overset{\hat{\_}}{h}}_{k}^{Ie} + {\left( {\mu_{0}/\mu} \right){\overset{\hat{\_}}{w}}_{k\;}^{*}}}} & (79) \end{matrix}$

In (79) ĥ ^(eF) is obtained from (69) after replacing h ^(e) by ĥ _(k) ^(e), ĥ _(k) ^(Ie) is given by (77) after replacing h_(i) by the estimate ĥn_(i,k) for i=−M₁, . . . ,0, . . . , M₁, and the truncation operation Tr₂ is comprised of discarding the last (M+2) elements from the vector in its argument.

FIG. 9 shows the FFT implementation of the correction signal generator 450B of FIG. 6. Referring to FIG. 9, the equalizer parameter vector 432 ŵ _(k) is input to the vector to scalar converter 710 that provides the N components 712 ŵ_(−N) ₁ _(,k), . . . , ŵ _(0,k), . . . , ŵ _(N) ₁ _(,k) of the vector ŵ _(k) at the output. The N components 712 ŵ_(−N) ₁ _(,k), . . . , ŵ_(0,k), . . . , ŵ_(N) ₁ _(,k) along with (M+2) zeros are input to the (K+3) point FFT1 block 720. The FFT1 block 720 evaluates the (K+3) point FFT transform of the inputs 712, 714 and provides the (K+3) outputs 735 ŵ_(0,k) ^(eF), . . . , ŵ_(k+2,k) ^(eF) to the multipliers 736 ftm₁, . . . , ftm_(K+3). Referring to FIG. 9, the estimate of the channel impulse response vector 442 ĥ _(k) is input to the vector to scalar converter 724 that provides the M outputs 726 to the inputs of the FFT2 block 730. The other (N+2) inputs 727, 728 of the FFT2 block 730 are set equal to 0. The (K+3) outputs 731 of the FFT2 block 730 ĥ_(0,k) ^(eF), . . . , ĥ_(K+2) ^(eF) are input to the (K+3) modulus square blocks 732 msq₁, . . . , msq_(K+3). The outputs 733 of the (K+3) modulus square blocks 732 msq₁, . . . , msq_(K+3) are connected to the inputs of the respective (K+3) multipliers 736 ftm₁, . . . ,ftm_(K+3). The (i+1)^(th) ftm multiplier ftm, multiplies ŵ_(i,k) ^(eF) with |ĥ_(i,k) ^(eF)|² and provides the output 737 to the (i+1)^(th) input of the (K+3) point IFFT block 740 for i=0, (K+2). The IFFT block 740 evaluates the (K+3) point IFFT of the (K+3) inputs 737. The last (M+2) outputs 749 of the IFFT block 740 are discarded.

Referring to FIG. 9, the first 742 (N₁-M₁) and the last 748 (N₁-M₁) of the remaining N outputs of the IFFT block 740 denoted by ŵ_(0,k) ^(pe), . . . ,ŵ_(n) ₁ _(−M) ₁ _(−1,k) ^(pe), ŵ_(N) ₁ _(+M) ₁ _(+1,k) ^(pe), . . . ,ŵ_(N-1,k) ^(pe) are inputted to the respective 2(N₁-M₁) inputs of the scalar to vector converter 760. The M components 744 of the IFFT block ŵ_(N) ₁ _(−M) ₁ _(,k) ^(pe), . . . , ŵ_(n) ₁ _(+M) ₁ _(,k) ^(pe) are inputted to the inputs of the M fta adders 746 fta₁, . . . , fta_(M) that subtract the complex conjugate 751 of the 726 ĥ_(−M) ₁ _(,k), . . . , ĥ_(0,k), . . . , ĥ_(M) ₁ _(,k) respectively provided by the conjugate block 750 from the inputs 744 provided by the IFFT block 740 by the adders 746. The outputs 726 ĥ_(−M) ₁ _(,k) . . . . ,ĥ_(0,k), . . . ĥ_(M) ₁ _(,k) of the vector to scalar converter 734 are provided to the conjugate block 750. Referring to FIG. 9, the outputs of the M fta adders are inputted to the scalar to vector converter 760 that provides the vector 761

${\overset{\hat{\_}}{w}}_{k}^{{pc}^{*}} = {{{Tr}\left\{ {F^{- 1}\left\lbrack {{\overset{\hat{\_}}{w}}_{k}^{eF}\bullet {{\overset{\hat{\_}}{h}}_{k\;}^{eF}}^{2}} \right\rbrack} \right\}} - {\overset{\hat{\_}}{h}}_{k}^{{Ie}^{*}}}$

to the conjugate block 762. The output 764 ŵ _(k) ^(pc) of the conjugate block 762 is input to the adder 780 that adds (μ₀/μ) ŵ _(k)* provided by the multiplier 766 to 764 ŵ _(k) ^(pc) with the result of the addition equal to the second correction signal vector 452 w _(k) ^(c) ² . The conjugate of the equalizer parameter vector 432 ŵ _(k) is inputted to the multiplier 765. The second correction signal vector 452 w _(k) ^(c) ² is inputted to the adaptation block 16 of FIG. 6. As in (79)μ and μ₀ are small positive scalars and determine the relative weights assigned to the noise and ISI as in ((62)-(65).

In one of the various alternative embodiments of the invention, the equalizer filter 9 in the BMAEHS 60 of FIG. 1 may be selected as the decision feedback equalizer (DFE) filter. In the decision feedback equalizer some of the components of the equalizer state vector ψ _(k) are replaced by the detected symbols that are available at the instance of detecting the present symbol a_(k+M) ₁ ^(d). The equalizer parameter vector update algorithm is given by

ŵ _(k+1) = ŵ _(k)+μ_(d) ŵ _(k) ^(c) ¹ −μ ŵ _(k) ^(c) ² ;  (80a)

ŵ _(k) ^(c) ¹ = ψ _(k))a _(k+M) ₁ ^(d) − ŵ _(k) ^(H) ψ _(k))*;  (80b)

ψ _(k) =[z _(k+k) ₁ , . . . ,z _(k+M) ₁ ,a _(k+M) ₁ ⁻¹ ^(d) . . . ,a _(k+M) ₁ _(−N) ₂ ^(d)]^(T) ;k=0,1,  (80c)

In (80) the dimension N of the equalizer parameter vector ŵ _(k) is given by N=N₁+N₂+1 with N₂ denoting the number of components of the equalizer parameter state vector that are equal to the previous detected symbols. The second correction signal vector w _(k) ^(c) ² in (80a) is generated so as to minimize the modeling error in the equalizer and minimizes the norm of the vector that is equal to the difference between the impulse response vector of the cascade of the channel and the equalizer ĝ _(k) ^(m) and the vector δ=[0 . . . 010 . . . 0]^(T) of appropriate dimension. An expression for the impulse response ĝ _(k) ^(m) is obtained by first splitting the equalizer parameter vector ŵ _(k) as

ŵ _(k) =[ ŵ _(k) ^(+T) ŵ _(k) ^(−T)]^(T)  (81a)

ŵ _(k) ⁺ =[ŵ _(−N) ₁ _(,k) , . . . , w _(0,k)]^(T) ; ŵ _(k) ⁻ =[ŵ _(1,k) , . . . ,ŵ _(N) ₂ _(,k)]^(T)  (81b)

For relatively low probability of error in the detection of a_(k) ^(d)=a_(k) for most of the times and the impulse response vector of the cascade of the channel and the equalizer ĝ _(k) ^(m) may be approximated by

$\begin{matrix} {{{\overset{\hat{\_}}{g}}_{k}^{m} = {{\overset{\hat{\_}}{g}}_{k}^{+} + {\overset{\hat{\_}}{w}}_{k}^{- e}}};{{\overset{\hat{\_}}{g}}_{k}^{+} = {{\overset{\hat{\_}}{H}}_{k}^{+}{\overset{\hat{\_}}{w}}_{k}^{+}}};} & \left( {82a} \right) \\ {{\overset{\hat{\_}}{w}}_{k}^{- e} = \begin{bmatrix} \underset{\underset{K_{1} + 1}{}}{0\mspace{14mu} \ldots \mspace{14mu} 0} & {\overset{\hat{\_}}{w}}_{k}^{- T} \end{bmatrix}^{T}} & \left( {82b} \right) \end{matrix}$

In (82a) Ĥ_(k) ⁺ is an (M+N₁)×(N₁+1) matrix and is obtained from the matrix H⁺ with the elements h_(i) of the matrix H⁺ replaced by the estimates ĥ_(i,k) for i=M₁, . . . ,0, . . . , M₁ and with the matrix H⁺ given by (83).

$\begin{matrix} {H^{+} = \begin{bmatrix} H_{1}^{+} \\ H_{2}^{+} \\ H_{3}^{+} \end{bmatrix}} & \left( {83a} \right) \\ {{{H_{1}^{+} = \begin{bmatrix} h_{- M_{1}} & 0 & 0 & \ldots & 0 \\ h_{{- M_{1}} + 1} & h_{- M_{1}} & 0 & \ldots & 0 \\ \; & \ldots & \ldots & \ldots & \; \\ h_{{- M_{1}} + N_{1}} & \ldots & \ldots & \ldots & h_{- M_{1}} \end{bmatrix}};}{H_{2}^{+} = \begin{bmatrix} h_{{- M_{1}} + N_{1} + 1} & 0 & 0 & \ldots & h_{{- M_{1}} + 1} \\ \; & \ldots & \ldots & \ldots & \; \\ h_{M} & \ldots & \ldots & \ldots & h_{M_{1} - N_{1}} \end{bmatrix}}} & \left( {83b} \right) \\ {H_{3}^{+} = \begin{bmatrix} 0 & h_{M_{1}} & 0 & \ldots & h_{M_{1} - N_{1} + 1} \\ 0 & 0 & h_{M_{1}} & \ldots & h_{M_{1} - N_{1} + 2} \\ \; & \ldots & \ldots & \ldots & \; \\ 0 & 0 & \ldots & \ldots & h_{M_{1}} \end{bmatrix}} & \left( {83c} \right) \end{matrix}$

In (83b, c) 2M₁ is assumed to be greater than N₁. More generally the matrix H⁺ is obtained by N+M₁ shifted versions of the channel impulse response vector h, appended with appropriate number of 0s on both sides of h, staring with the first row equal to the first row of the matrix H₁ ⁺ in (83b). In (81)-(82) N₂ is selected equal to M₁. The second correction signal vector ĝ _(k) ^(c) ² in (80a) is obtained by minimizing the norm of the vector with ( ĝ _(k) ^(m)− δ) with respect to the vectors ŵ _(k) ⁺, and ŵ _(k) ⁻. Equivalently the result is obtained by minimizing the objective function J_(L) ₂ in (84a)

J _(L) ₂ =(H _(k) ^(c) w− δ _(K) ₁ _(,N) ₂ )^(H)(H _(k) ^(c) w− δ _(K) ₁ _(,N) ₂ )  (84a)

with respect to the equalizer parameter vector w. In (84a) H_(k) ^(c) is the matrix given by (84b).

$\begin{matrix} {H_{k}^{c} = \begin{bmatrix} H_{k}^{+} & \vdots & \begin{matrix} O_{{({K_{1} + 1})} \times M_{1}} \\ I_{M_{1}} \end{matrix} \end{bmatrix}} & \left( {84b} \right) \end{matrix}$

In (84b) O_((K) ₁ _(+1)×M) ₁ is the (K₁+1)×M_(l) matrix with all the elements equal to 0 and I_(M) ₁ is the (M₁×M₁) identity matrix. The second correction signal vector w _(k) ^(c) ² is given by

ŵ _(k) ^(c) ² =Ĥ _(k) ^(cH)(Ĥ _(k) ^(c) ŵ _(k)− δ _(K) ₁ _(,N) ₂ )*  (85)

With the application of (84b), the second correction signal vector w _(k) ^(c) ² may be written in the equivalent form in (86).

$\begin{matrix} {{\overset{\_}{w}}_{k}^{c_{2}} = {\begin{bmatrix} H_{k}^{+^{H}} \\ \ldots \\ \begin{matrix} O_{M_{1} \times {({K_{1} + 1})}} & I_{M_{1}} \end{matrix} \end{bmatrix}\left( {{\overset{\hat{\_}}{g}}_{k}^{m} - {\overset{\_}{\delta}}_{K_{1},N_{2}}} \right)^{*}}} & \left( {86a} \right) \\ {{\overset{\hat{\_}}{g}}_{k}^{m} = {{H_{k}^{+}{\overset{\hat{\_}}{w}}_{k}^{+}} + {\overset{\hat{\_}}{w}}_{k}^{- e}}} & \left( {86b} \right) \end{matrix}$

With ĝ _(k) ^(m) split as

$\begin{matrix} {{\overset{\hat{\_}}{g}}_{k}^{m} = \left\lbrack {\left( {\overset{\hat{\_}}{g}}_{k}^{1m} \right)^{T}\left( {\overset{\hat{\_}}{g}}_{k}^{2m} \right)^{T}} \right\rbrack^{T}} & \left( {86c} \right) \\ {{\overset{\_}{w}}_{k}^{c_{2}} = \begin{bmatrix} {H_{k}^{+ T}\left( {{\overset{\hat{\_}}{g}}_{k}^{m} - {\overset{\_}{\delta}}_{K_{1},N_{2}}} \right)} \\ {\overset{\hat{\_}}{g}}_{k}^{2m} \end{bmatrix}^{*}} & \left( {86d} \right) \end{matrix}$

In (86c) ĝ _(k) ^(1m) and ĝ _(k) ^(2m) are vectors of dimension (K₁+1) and N₂ respectively.

FIG. 10 shows the block diagram of the BMAEHS block 60 of FIG. 1 for one of the embodiments of the invention incorporating the case of the decision feedback equalizer. Referring to FIG. 10, the normalized channel output 8 z _(k+K) ₁ is input to a cascade of N₁ delay elements 801 providing the delayed versions 802 of z_(k+K) ₁ denoted by z_(k+K) ₁ ⁻¹, . . . , z_(k+K) ₁ _(−N) ₁ at their respective outputs. The normalized channel output 8 and its N₁ various delayed versions 802 are input to the (N₁+1) wm multipliers 803 wm₁, . . . , wm_(N) ₁ ₊₁. The N wm multipliers 803, 815 are inputted by the conjugates of the components of the equalizer parameter vector ŵ_(−N) ₁ _(,k), . . . ,ŵ_(0,k), . . . ,ŵ_(N) ₂ _(,k). provided by the conjugate blocks 804, 816 that are inputted with the components 805 of the equalizer parameter vector ŵ _(k). The (N₁+1) wm multipliers 803 multiply the normalized channel output and its N₁ delayed versions 802 by the conjugates 806 of the first N₁ components of the equalizer parameter vector ŵ _(k) generating the respective products 807 at the outputs of the wm multipliers 803. The outputs 807 of the (N₁+1) wm multipliers are input to the summer 808 that provides a linear estimate 809 â_(k+M) ₁ of the data symbol at the output of the summer 808. The linear estimate 809 â_(k+M) ₁ is input to the decision device 11 that generates the detected symbol 12 a_(k+M) ₁ ^(d) based on the decision function Δ( ) given by (20)-(25).

Referring to FIG. 10, the detected symbol 12 a_(k+M) ₁ ^(d) is input to the cascade of N₂ delays 814 providing the N₂ delayed versions 812 of a_(K+m) ₁ ^(d) denoted by a_(k+m) ₁ ⁻¹, . . . ,a_(k+M) ₁ _(−N) ₂ ^(d) at their respective outputs. The N₂ delayed versions 812 of a_(k+M) ₁ ^(d) are input to the N₂ wm multipliers 815 wm_(N) ₁ ₊₂, . . . ,wm_(N) and are multiplied by complex conjugates 817 of the last N₂ components 805 of the equalizer parameter vector ŵ_(1,k), . . . ,ŵ_(N)2_(,k) in the N₂ wm multipliers 815 generating the respective products 818 at the outputs of the N₂ wm multipliers. The outputs 818 of the N₂ wm multipliers 815 are input to the summer 808 that provides the linear estimate 809 â_(k+M) ₁ of the data symbol at the output. The components 802, 812 z_(k+K) ₁ , . . . , z_(k+K) ₁ _(−N) ₁ , d_(k+M) ₁ ⁻¹ ^(d), . . . , a_(k+M) ₁ _(−N) ₂ ^(d) of the state vector ψ _(k) are inputted to the wcm multipliers 820 wcm₁, . . . , wcm_(N) that multiply the components of ψ _(k) by μ_(d)e_(k)* with the outputs of the multipliers constituting the components 830 of the vector μ_(d) ŵ _(k) ^(c) ¹ made available to the N wca adders 832 wca₁, . . . , wca_(N). Referring to FIG. 10, the linear estimate 809 a_(k+M) ₁ and the detected symbol 12 a_(k+M) ₁ ^(d) are inputted to the adder 823 that provides the error signal 824 e_(k)=(a_(k+M) ₁ ^(d)−â_(k+M) ₁ ) to the input of the conjugate block 825. The output 826 of the conjugate block 825 is multiplied by the scalar μ_(d) in the multiplier 827 with the output 826 inputted to the N wcm multipliers 820 wcm₁, . . . , wcm_(N).

Referring to FIG. 10, the detected symbol 12 a_(K+M) ₁ ^(d) is inputted to the channel estimator 440. The normalized channel output 8 z_(k+K) ₁ is input to the delay block 435 that introduces a delay of K₁ samples providing the delayed version 436 z_(k) to the input of the channel estimator 440. The channel estimator 440 provides the estimate of the channel impulse response vector 442 ĥ _(k) at the output of the channel estimator. The equalizer parameters 805 ŵ_(−N) ₁ _(,k), . . . ,ŵ_(0,k), . . . ,ŵ_(N) ₂ _(,k) are input to the scalar to vector converter 840 that provides the equalizer vector 841 ŵ _(k) to the correction signal generator for DFE block 850. The estimate of the channel impulse response vector 442 ĥ _(k) is input to the correction signal generator for DFE block 850 that provides the second correction signal vector 842 w _(k) ^(c) ² to the multiplier 843. The correction signal generator for DFE 850 estimates the impulse response ĝ _(k) ^(mT) of the cascade of the channel and the equalizer. The difference between the vector ĝ _(k) ^(mT) and the ideal impulse response vector

${\overset{\_}{\delta}}_{K_{1},N_{2\;}}^{T} = \begin{bmatrix} \underset{\underset{K_{1\;}}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0} & 1 & \underset{\underset{N_{2}}{}}{00\mspace{14mu} \ldots \mspace{14mu} 0} \end{bmatrix}$

may provide a measure of the modeling error incurred by the equalizer. A large deviation of the convolved response ĝ _(k) ^(mT) from the ideal impulse response implies a relatively large modeling error.

The correction signal generator block 850 generates the second correction signal 842 w _(k) ^(c) ² on the basis of the modeling error vector [ δ _(K) ₁ _(,N) ₂ − ĝ _(k)] and is given by (85)-(86). The second correction signal 842 w _(k) ^(c) ² is inputted to the adaptation block 16B for adjusting the equalizer parameter vector ŵ _(k+1) at time k+1. The decision feedback equalizer parameter algorithm implemented by the adaptation block 16B of FIG. 10 is described by (80). Referring to FIG. 10, the second correction signal 842 w _(k) ^(c) ² is multiplied by a positive scalar μ providing the product to the vector to serial converter 845. The outputs ŵ_(−N) ₁ _(,k) ^(c) ² , . . . , ŵ_(N) ₂ _(,k) ^(c) ² are inputted to the N wca adders 832. The outputs of the N wca adders 832 constituting the components of the updated equalizer parameter vector ŵ _(k+1) are inputted to the N delays 834. The outputs of the N delays 834 are inputted to the N conjugate blocks 804.

FIG. 11 shows the block diagram of the correction signal generator for the decision feedback equalizer 850 of FIG. 10. Referring to FIG. 11, the estimate of the channel impulse response vector 442 ĥ _(k) is input to the matrix Ĥ_(k) ⁺ collator 860 that forms matrix 861 Ĥ_(k) ⁺ according to equation (83a) with h_(i) in (83) replaced by ĥ_(i) for i=M₁, . . . , M₁. The equalizer parameter vector 841 ŵ _(k) is input to the vector splitter 864 that provides two vectors 865 ŵ _(k) ⁺=[ŵ_(−N) ₁ _(,k), . . . , ŵ_(0,k)]^(T) and 866 ŵ _(k) ⁻=[ŵ_(1,k), . . . , ŵ_(N) ₂ _(,k)]^(T) defined in (81b) at the output where N₂ may be equal to M₁. Referring to FIG. 11, the matrix 861 Ĥ_(k) ⁺ and the vector 865 ŵ _(k) ⁺ are inputted to the matrix multiplier 867 that provides the product 868 ĝ _(k) ⁺=Ĥ_(k) ⁺ ŵ _(k) ⁺ at the matrix multiplier 867 output. The vector 868 ĝ _(k) ⁺ is input to the vector to scalar converter 870 that provides the components 871, 872, 875 ĝ_(−K) ₁ _(,k) ⁺, . . . , ĝ_(0,k) ⁺, . . . ,ĝ_(N) ₂ _(,k) ⁺ at the output of the vector to scalar converter 870. The first K₁ components 871 ĝ_(−K) ₁ _(,k) ⁺, . . . , ĝ_(−1,k) ⁺ of the vector ĝ _(k) ⁺ are input to the scalar to vector converter 880. The component 872 ĝ_(0,k) ⁺ subtracts the constant 1 in the adder 873 with the result of the subtraction 874 (ĝ_(0,k) ⁺−1) inputted to the scalar to vector converter 880 as shown in FIG. 11. The scalar to vector converter 880 provides the vector 883 ( ĝ _(k) ^(1m)− δ _(K) ₁ _(,0)) at the output where ĝ _(k) ^(1m)=[ĝ_(−K) ₁ _(,k) ⁺, . . . ,ĝ_(0,k) ⁺]^(T) and δ _(K) ₁ _(,0) is the discrete impulse vector with K₁ zeros followed by 1 as its components.

Referring to FIG. 11, the vector 841 ŵ _(k) ⁻ is inputted to the vector to scalar converter 2 that provides the components 877 ŵ_(1,k), . . . , ŵ_(N) ₂ _(,k) at the output of the vector to scalar converter 895. The components 877 ŵ_(1,k), . . . , ŵ_(N) ₂ _(,k) and the components 875 ĝ_(1,k) ⁺, . . . ,ĝ_(N) ₂ _(,k) ⁺ of the vector ĝ _(k) ⁺ are inputted to the adders 876 ga₁, . . . , ga_(N2). The N₂ ga_(i) adder 876, i=1, 2, . . . , N₂ provides the sum 879 (ĝ_(i,k) ⁺+ŵ_(i,k)) at the adder output. The outputs 879 of the N₂ ga adders 876 are input to the scalar to vector converter 882 that provides the vector 884 ĝ _(k) ^(2m) at the output. Referring to FIG. 11, the vectors ( ĝ _(k) ^(1m)− δ _(k) ₁ _(,0)) and ĝ _(k) ^(2m) are inputted to the vector concatenator 885 that concatenates the input vectors in to the vector 888 ( ĝ _(k) ^(m)− δ _(K) ₁ _(,N) ₂ )=[( ĝ _(k) ^(1m)− δ _(K) ₁ _(,0))^(T)( ĝ _(k) ^(2m))^(T)]^(T) of size (K₁+N₂+1) at the output of the vector concatenator 885 and provides the result to the matrix multiplier 886. The matrix 861 Ĥ_(k) ⁺, from the matrix Ĥ_(k) ⁺ collator block is input to the transpose block 862 that provides the matrix 863 Ĥ_(k) ^(+T) to the input of the matrix multiplier 886. The matrix multiplier 886 provides the product 887 Ĥ_(k) ^(+T)( ĝ _(k) ^(m)− δ _(k) ₁ _(,N) ₂ ) at the matrix multiplier 886 output and makes the result available to the vector concatenator 2. The vector ĝ _(k) ^(2m) is inputted to the vector concatenator 2 that concatenates it with the vector Ĥ_(k) ^(+T)( ĝ _(k) ^(m)− δ _(K) ₁ _(,N) ₂ ) providing the concatenated vector 891 to the conjugate block 892. The output 842 of the conjugate block 892 is equal to the second correction signal w _(k) ^(c) ² according to (86).

The convergence rate of the equalizer parameter vector update algorithm in (27) to (31) may be significantly increased by the application of the orthogonalization procedure In the orthogonalization procedure, the sequence of the correction signal vectors is modified such that in the modified sequence, the correction signal vectors at successive time instances k are nearly orthogonal resulting in increased convergence rate. In one of the various embodiments of the invention, the BMAEHS block of FIG. 1 is modified by an orthogonalizer.

FIG. 12 shows the block diagram of the BMAEHS block 70 incorporating the correction signal vector orthogonalizer that may replace the BMAEHS block 60 in FIG. 1. Referring to FIG. 12, the normalized channel output 8 z_(k+K) ₁ is input to the equalizer block 9(800), the number in the paranthesis refers to the case of the embodiment of the invention with the decision feedback equalizer. The linear estimate â_(k+M) ₁ at the output of the equalizer filter is input to the decision device 11 that generates the detected symbol 902 a_(k+M) ₁ ^(d) based on the decision function Δ( ). The linear estimate 901 â_(k+M) ₁ is subtracted from the detected symbol 902 a_(k+M) ₁ ^(d), by the adder 903 providing the error signal 904 e_(k)=(a_(k+M) ₁ ^(d)−â_(k+M) ₁ ). The complex conjugate of the error signal 904 e_(k) made available by the conjugate block 905 and the equalizer state vector 907 ψ _(k) provided by the equalizer 9(800) are inputted to the matrix multiplier 910. The matrix multiplier 901 generates the first correction signal vector 911 w _(k) ^(c) ¹ that that is made available to the correction signal vectors normalizer 915. Referring to FIG. 12, the MEECGS block 50(810) provides the second correction signal vector 912 w _(k) ^(c) ² to the correction signal vectors normalizer 915. The correction signal vectors normalize 915 normalizes the two correction signal vectors 911, 912 by the square roots of the mean squared norms of the respective correction signal vectors and inputs the normalized correction signal vectors 916 χ _(k) ¹ and 917 χ _(k) ² to the adder 918. The adder 918 subtracts the vector χ _(k) ² from χ _(k) ¹ providing the difference 920 χ _(k)= χ _(k) ¹− χ _(k) ² to the input of the orthogonalizer block 955. In various alternative embodiments of the invention, the difference 920 χ _(k)= χ _(k) ¹− χ _(k) ² may be replaced by a weighted difference χ _(k)=μ₁ χ _(k) ¹−μ₂ χ _(k) ² for some positive weighting coefficients μ₁ and μ₂.

Referring to FIG. 12, the orthogonalizer 955 provides the orthogonalized correction signal vector 955 K_(k) ^(e) at the output of the orthogonalizer evaluated according to equation (87a, b),

K _(k) ^(e) =Q _(k) χ _(k) =Q _(k−1) χ _(k)( χ _(k) ^(H) Q _(k−1) χ _(k)+λ^(J))⁻¹  (87a)

Q _(k)=λ_(J) ⁻¹ [Q _(k−1) −Q _(k−1) χ _(k)( χ _(k) ^(H) Q _(k−1) χ _(k)+λ_(J))⁻¹ χ _(k) ^(H) Q _(k−1) ];k=0,1,  (87b)

In (87b) the matrix Q⁻¹ may be set equal to εI_(N) with ε equal to some positive scalar and I_(N) denting the N×N identity matrix. In (87b) λ_(J) is an exponential data weighting coefficient with 0<λ_(J)≦1 and determines the rate at which the past values of 920 χ _(k) are discarded in the estimation of the matrix Q_(k) as with the application of the matrix inversion lemma, the matrix Q_(k) ⁻¹ for relatively large value of k may be interpreted as a positive scalar times an estimate of the covariance of χ _(k), with Q_(k) ⁻¹≅((1−λ_(J) ^(k))/(1−λ_(J)))E[ χ _(k) χ _(k) ^(H)] where E denotes the expected value operator.

Referring to FIG. 12, the normalized correction signal vector 920 χ _(k) is input to the matrix multiplier 921 wherein 920 χ _(k) is pre multiplied by the matrix 922 Q_(k−1). The matrix 922 Q_(k−1) is made available to the matrix multiplier 921 by the output of the delay 944. The output of the matrix multiplier 921 is input to the matrix multiplier 926. The normalized correction signal vector 920 χ _(k) is input to the conjugate transpose block 924 that provides the row vector 929 χ _(k) ^(H) to the input of the matrix multiplier 926. The matrix multiplier 921 output 923 equal to Q_(k−1) χ _(k) is inputted to the matrix multiplier 934 and to the conjugate transpose block 937. The matrix multiplier 926 output 927 equal to χ _(k) ^(H)Q_(k−1) χ _(k) is input to the adder 928 that adds the constant λ_(J) to the input 927. The output 931 of the adder 928 equal to ( χ _(k) ^(H)Q_(k−1) χ _(k)+λ_(J)) is input to the inverter 932 that makes the result 933 equal to 1/( χ _(k) ^(H)Q_(k−1) χ _(k)+λ_(J)) available to the input of the matrix multiplier 934. The matrix multiplier 934 output 935 equal to K_(k) ^(e)=Q_(k−1) χ _(k)/( χ _(k) ^(H)Q_(k−1) χ _(k)+λ_(J))=Q_(k) χ _(k) constitutes the orthogonalized correction signal vector K_(k) ^(e). The output 935 of the matrix multiplier 934 and the output of transpose block 937 equal to χ _(k) ^(H)Q_(k−)1 are inputted to the matrix multiplier 936 that provides the matrix product 939 Q_(k−1) χ _(k) χ _(k) ^(H)Q_(k−1)/( χ _(k) ^(H)Q_(k−1) χ _(k)+λ_(J)) at the output of the matrix multiplier 936. The outputs of the delay 944 and that of the matrix multiplier 936 are input to the adder 940 that provides the difference between the two inputs at the output of the adder. The output 941 of the adder 940 is normalized by the constant λ_(J) in the multiplier 941. The output 943 of the multiplier 941 constitutes the updated matrix 943 Q_(k) that is input to the delay 944. The output of the delay 944 equal to 922 Q_(k−1) is input to the multiplier 921.

Referring to FIG. 12, the normalized channel output 8 z_(k+K) ₁ is input to the delay block 435 that introduces a delay of K₁ samples providing the delayed version 436 z_(k) to the input of the channel estimator 440. The detected symbol 902 a_(k+M) ₁ ^(d) from the output of the decision device 11 is made available to the channel estimator 440. The channel estimator 440 provides the estimate of the channel impulse response vector 442 ĥ _(k) at the output of the channel estimator and to the input of the correction signal generator 450(850). In one of the various embodiments of the invention the equalizer filter 9(800) in FIG. 12 is the linear equalizer filter and the correction signal generator block is the same as the correction signal generator block for LEQ 450 of FIG. 6 for the BMAEHS with the linear equalizer. The correction signal generator 450 convolves the estimate of the channel impulse response vector 442 ĥ _(k) ^(T) with the equalizer parameter vector 950 ŵ _(k) ^(T) to obtain the convolved vector ĝ _(k) ^(T). The difference between the vector ĝ _(k) ^(T) obtained by convolving the estimate of the channel impulse response vector with the equalizer parameter vector ŵ _(k), and the ideal impulse response vector δ _(K) ₁ _(,K) ₂ may provide a measure of the modeling error incurred by the equalizer. A large deviation of the convolved response ĝ _(k) ^(T) from the ideal impulse response implies a relatively large modeling error. The correction signal generator block 450 generates the second correction signal vector 912 w _(k) ^(c) ² on the basis of the modeling error vector [ δ _(K) ₁ _(,K) ₂ − ĝ _(k)]. The second correction signal vector 912 w _(k) ^(c) ² is inputted to the correction signal vectors normalizer block 915.

In an alternative embodiment of the invention, the equalizer filter 9(800) in FIG. 12 is the decision feedback equalizer filter 800 and the correction signal generator block 450(850) is the same as the correction signal generator block DFE 850 of FIG. 10 for the BMAEHS with the decision feedback equalizer. The correction signal generator block 850 evaluates the second correction signal vector 912 w _(k) ^(c) ² and makes it available to the correction signal vectors normalize 915.

Referring to FIG. 12, the orthogonalized correction signal vector 935 K_(k) ^(e) available at the output of the orthogonalizer 955 is inputted to the multiplier 945 that multiplies the vector 935 K_(k) ^(e) by a positive scalar μ. The scalar μ may be selected to be either a constant or may be a function of k. For example, μ may be equal to μ=μ₀(1−λ_(j) ^(k))/(1−λ_(J)) for some positive scalar μ₀ to and with 0<λ_(J)<1. Such a time-varying μ normalizes the matrix 943 Q_(k) in (87a) effectively replacing Q_(k) ⁻¹ by ((1−λ_(J))/(1−λ_(J) ^(k)))Q_(k) ⁻¹≅E[ χ _(k) χ _(k) ^(T)]. Referring to FIG. 12, the output 946 of the multiplier 945 equal to μK_(k) ^(e) is inputted to the adder 947 that adds the input 947 μK_(k) ^(e) to the other input 950 of the adder equal to ŵ _(k) made available from the output of the delay 949. The output 948 of the adder 947 constitutes the updated equalizer parameter vector given ŵ _(k+1) by

ŵ _(k+1) = ŵ _(k) +μK _(k) ^(e)  (88)

The vector 948 ŵ _(k+1) is input to the delay 949 providing the delayed version of the input ŵ _(k) at the output of the delay. Referring to FIG. 12, the equalizer parameter vector 950 ŵ _(k) is input to the correction signal generator 450(850) and the vector to scale converter 991. The vector to scalar converter 991 provides the components 992 ŵ_(−N) ₁ _(,k) ^(c) ² , . . . , ŵ_(0,k) ^(c) ² , . . . , ŵ_(n) ₂ _(,k) ^(c) ² with N₂ possibly equal to N₁, of the equalizer parameter vector 950 ŵ _(k) to the equalizer block that provides the linear estimate of the data symbol 901 â_(k+M) ₁ at the equalizer filter output.

FIG. 13 shows the correction signal vectors normalizer 915. Referring to FIG. 13, the first correction signal vector 911 w ^(c) ¹ is input to the norm square block 951 that provides the output 953 p_(k)=∥ w ^(c) ¹ ∥². The signal 953 p_(k) is input to the accumulator 952 Acc1 that accumulates the input 953 p_(k) according to the equation

p _(k) ^(a)=λ_(c) p _(k−1) ^(a) +p _(k) ;p ⁻¹ ^(a) =c ₁ ;p _(k) =∥ w _(k) ^(c) ¹ ∥² ;k=0,1,  (89a)

where λ_(c) with 0<λ≦1 is the exponential data weighting coefficient. The accumulator Acc1 952 is comprised of an adder 954, a delay 956, and a multiplier 958. The delay 956 is inputted with the accumulator output 955 p_(k) ^(a) and provides the delayed version 957 p _(k−1) ^(a) to the input of the multiplier 958 that multiplies the input 957 by λ_(p) and provides the product 959 to the adder 954. The adder 954 sums the input 953 p_(k) and the multiplier output 959 λ_(c)p_(k−1) ^(a) providing the sum 955 p_(k) ^(a) at the output of the adder. Referring to FIG. 13, the constant 1 is input to the accumulator Acc2 962 that results in the output of the accumulator Acc2 962 given by equation (89b)

κ_(k)=λ_(c)κ_(k−1)+1;κ_(k)=(1−λ_(c))/(1−λ_(c) ^(k))  (89b)

The outputs of the accumulators Acc1 960 and Acc2 962 are input to the divider 961 that makes the result of the division 966 p_(k) ^(f)=p_(k) ^(a)/κ_(k) available at the output of the divider. The signal 966 p_(k) ^(f) is input the square root block 967 that makes the result 968 √{square root over (p_(k) ^(f))} available to the divider 970. The first correction signal vector 911 w ^(c) ¹ is input to the divider 970 and is divided by the other input of the divider equal to 968 √{square root over (p_(k) ^(f))} and makes the normalized correction signal 1 vector 916 χ _(k) ¹= w _(k) ^(c) ¹ /√{square root over (p_(k) ^(f))} available at the output of the divider 970.

Referring to FIG. 13, the second correction signal vector 912 w _(k) ^(c) ² is input the mean square 2 estimator 980 that is comprised of the norm square block 971, the adder 974, the delay 976, the multiplier 978, and the divider 981. The operation of the mean square 2 estimator 980 is similar to that of the mean square 1 estimator 960 and provides the result 982 q_(k) ^(f) evaluated according to (89c, d) to the square root block 983 that provides the output 984 √{square root over (q_(k) ^(f))} to the divider 985. The second correction signal vector 912 w _(k) ^(c) ² is input to the divider 985 that normalized the second correction signal vector 912 w _(k) ^(c) ² providing the second normalized correction signal vector 917 χ _(k) ²= w _(k) ^(c) ² /√{square root over (q_(k) ^(f))} at the output of the divider 985.

q _(k) ^(a)=λ_(c) q _(k−1) ^(a) +q _(k) ;q ⁻¹ ^(a) =c ₂ ;q _(k) =∥ w _(k) ^(c) ² ∥² ;k=0,1,  (89c)

p _(k) ^(f) =p _(k) ^(a)(1−λ_(c))/(1−λ_(c) ^(k));q _(k) ^(f) =q _(k) ^(a)(1−λ_(c))/(1−λ_(c) ^(k))  (89d)

Referring to FIGS. 6 and 10, in various embodiments of the invention, positive scalars μ_(d) and μ therein may alternatively be selected according to

μ_(d)=μ₀/√{square root over (p _(k) ^(f))};μ₀/√{square root over (q _(k) ^(d))}  (90)

with p_(k) ^(f) and q_(k) ^(f) evaluated according to (89). In (90) μ₀ is some positive scalar.

The equalizer total error variance equal to E[|a_(k)−a_(k) ^(d)|²] with E denoting the expected value operator is in general dependent upon the size N of the equalizer parameter vector. Increasing N may result in the reduction of the equalizer total error variance, however it requires a higher computational complexity. For the BMAEHS of the invention, the dominant term in the number of computations per iteration of the equalizer parameter update algorithm is proportional to N². Thus doubling the size N of the equalizer parameter vector, for example, results in an increase in the number of computations by factor of four. The BMAEHS reduces the equalizer total error variance to a relatively small value even for a relatively small value of N, for example with N in the range of 10-20.

The equalizer total error variance can be further reduced while keeping the total number of computations required per iteration to a minimum by adding a second equalizer in cascade with the BMAEHS. The equalizer total error variance E[|a_(k)−a_(k) ^(d)|²] achieved by the BMAEHS after the initial convergence period is relatively small implying the convolution g _(k) of the channel impulse response vector h with the equalizer parameter vector ŵ _(k) is close to the discrete impulse vector δ=[0 . . . 010 . . . 0]^(T). The linear estimate â_(k) of the data symbol may be considered to be the output of an unknown equivalent channel with impulse response vector g _(k) with the input to the equivalent channel equal to a_(k).

FIG. 14 shows the block diagram of the cascaded equalizer 90. The blind mode adaptive equalizer equalizer (BMAE) 2 1060 in the cascaded equalizer of FIG. 14 estimates the data a_(k) on the basis of the input ²z_(k) to the equalizer 2 made equal to the linear estimate â_(k) provided by the BMAEHS with equalizer 2 1060 parameter vector of length N′=N₁′+N₂′+1. During the initial stage of the convergence of equalizer 2 1060, the symbol a_(k) required in the adaptation algorithm for the equalizer 2 1060 is replaced by the detected data symbol a_(k) ^(d) provided by the BMAEHS. After the initial convergence period of the equalizer 2, the symbol a_(k) required in the adaptation algorithm for the equalizer 2 is replaced by the detected data symbol ² a _(k) ^(d) at the output of equalizer 2. The detected data ²a_(k) ^(d) at the output of the equalizer 2 is expected to be more accurate than a_(k) ^(d). The performance of the cascaded equalizer may be considered to be equivalent to that of the single BMAEHS equalizer with equalizer parameter vector size N+N′ but with significantly much smaller computational requirements. In view of the impulse response vector g _(k) of the equivalent channel being close to the discrete impulse vector δ, the adaptation algorithm for the equalizer 2 may, for example, be selected to be the LMS, RLS or QS algorithm without the need for hierarchical structure of the algorithm. In some embodiments of the invention, the stage 2 equalizer may also be a BMAEHS operating on the unknown channel with impulse response vector g _(k).

Referring to FIG. 14, the normalized channel output 8 z_(k+K) ₁ is input to the BMAEHS block 60 that provides the detected symbol 12 a_(k+M) ₁ ^(d) at the output. Referring to FIG. 14, the detected data symbol 12 a_(k+M) ₁ ^(d) and the linear estimate of data symbol 10 â_(k+M) ₁ that is equal to 1008 ²z_(k+K) ₁ , are inputted to the blind mode adaptive equalizer 2 1060. Referring to FIG. 14, the linear estimate of the data symbol 10 â_(k+M) ₁ is input to the equalizer filter 2 1009 with the equalizer parameter vector ŵ _(k) ²=[ŵ_(−N′) ₁ ², . . . , ŵ₀ ², . . . , ŵ_(N′) ₂ ²]^(T) and with the length of the equalizer 2 1009 equal to N′=N′₁+N′₂+1. In one of the various embodiments of the invention, the equalizer 2 1009 in the blind mode adaptive equalizer 2 block 1060 is a linear equalizer with N′₁=N′₂ with its block diagram same as that given in FIG. 6. In various other embodiments of the invention, the equalizer 2 1009 may be a decision feedback equalizer. The equalizer 2 1009 is initialized with the initial parameter vector estimate ŵ ₀ ²= δ _(N′) ₁ _(,N′) ₂ =[0 . . . 010 . . . 0]^(T). The state vector 1014 of equalizer 2 1009 given by ² ψ _(k)=[²z_(k+M) ₁ , . . . , ²z_(k+M) ₁ _(−N′) ₁ , . . . , ²z_(k+M) ₁ _(−N′+1)]^(T) is input to the adaptation block 2 1016 of the blind mode adaptive equalizer 2 1060.

Referring to FIG. 14, the block diagram of the adaptation block 2 1016 of the blind mode adaptive equalizer 2 1060 is similar to that of adaptation block 16 given by FIG. 6 with the second correction signal vector w ^(c) ² in the figure possibly set to 0. The parameter update equation for the adaptation block 2 1016 is given by

ŵ _(k+1) ² = ŵ _(k) ²+μ₂ ² ψ _(k)(a _(k+M) ₁ _(−N′) ₁ −² a _(k+M) ₁ _(−N′) ₁ )*;k=0,1,  (91a)

ŵ ₀ ²= δ _(N′) ₁ _(,N′) ₂ =[0 . . . 010 . . . 0]^(T)  (92b)

The iteration in (91a) is performed by the adaptation block 1016 for k>≧0. However, the equalizer 2 1009 parameter vector in the blind mode adaptive equalizer 2 is frozen at the initial condition ŵ ₀ ² during the first N′_(d) iterations of (91a) and is updated after the initial N′_(d) iteration of (91a) by the output 1033 of switch S3 by closing the switch S₃ 1023 after the initial N′_(d) iteration of (91a), at k+M₁=N_(d)+N′₁+N′_(d) where N_(d) and N′_(d) are the convergence periods of the BMAEHS 60 and the blind mode adaptive equalizer 2 1060 respectively. The convergence period N_(d) is the time taken by the equalizer in the BMAEHS 60 to achieve some relatively small mean square error after the first N₁ samples of the normalized channel output is inputted into the equalizer and may be selected to be about 100-200 samples. The convergence period N′_(d) of the blind mode adaptive equalizer 2 1060 is similarly defined.

Referring to FIG. 14, the linear estimate 1010 of the data symbol â_(k+M) ₁ _(−N′) ₁ is input to the decision device 1011 that provides the second detected data symbol 1012 ²a_(k+M) ₁ _(−N′) ₁ ^(d) at the output of the device according to the decision function D( ) that may be given by (20)-(25). The detected data symbol 1012 ²a_(k+M) ₁ _(−N′) ₁ ^(d) is connected to the input 2 of the switch S₄ 1026. The detected data symbol 12 a_(k+M) ₁ ^(d) from the BMAEHS 60 is inputted to the delay 1013 that provides a delayed version 1018 of the detected data symbol a_(k+M) ₁ _(−N′) ₁ to the position 1 of the switch S₄ 1026. The output 1040 of the switch S₄ 1026 is connected to the position 1 of the switch S₄ 1026 for k+M₁<N_(d)+N′₁+N′_(d) and is in position 2 for k+M₁≧N_(d)+N′₁+N′_(d). The output 1040 a_(k+M) ₁ _(−N′) ₁ of the switch S₄ 1026 is the final detected output of the cascaded equalizer. The final detected symbol 1040 of the cascaded equalizer is equal to the delayed version 1018 of the detected symbol a_(k+M) ₁ _(−N′) ₁ ^(d) from the BMAEHS 60 for k+M₁<N_(d)+N′₁+N′_(d) and is equal to the second detected data symbol 1012 ²a_(k+M) ₁ _(−N′) ₁ ^(d) for k+M₁≧N_(d)+N′₁+N′_(d) and is based on the combined equalization from both the stage 1 BMAEHS 60 and the stage 2 blind mode adaptive equalizer 2 1060 of the cascaded equalizer. Referring to FIG. 14, the final detected symbol 1040 is inputted to the adaptation block 2 1016 and to the delay 1030. The output 1032 of the delay is inputted to the equalizer filter 2 1009.

One of the various embodiments of the invention relates to the problem of adaptive beam former for recovering data symbol transmitted form a source in a blind mode. FIG. 15 shows the embodiment of the invention for the problem of adaptive digital beam former. As shown in the Figure, a source transmitter 1210 inputs an RF signal obtained by the baseband to RF conversion, not shown, of the source data symbols a_(k) to the transmit antenna 1215 for transmission. The transmitted RF signal is received by an array of N antennas 1202 a . . . n. The outputs 1222 of the antennas 1220 v_(R,1)(t), . . . , v_(R,N)(t) are input to the N RF front end blocks 1225 a, . . . , n. The outputs 1226 of the N front end blocks v_(RF,1)(t), . . . , v_(RF,N)(t) are inputted to the respective N RF to baseband complex converters 1230 a, . . . , n. The complex baseband signals 1232 v_(1,k), . . . , v_(N,k) are inputted to the adaptive digital beam former 1270 that provides the detected source data symbols a_(k) ^(d) at the output. Referring to FIG. 15, the complex baseband signals 1232 v_(1,k), . . . , v_(N,k) are inputted to the N multipliers 1235 a . . . n. The N multipliers 1235 a . . . n multiply the inputs by the respective weights ŵ_(1,k) ^(m), . . . , ŵ_(N,k) ^(m) made available by the multilevel adaptation block 1280. The outputs 1236 of the multipliers z_(1,k), . . . , z_(N,k) are summed by the adder 1238 providing the signal 1239 s_(k) at the output. The adder output 1239 s_(k) is inputted to the combiner gain normalizer block 1250 providing the linear estimate of the data symbol 1252 â_(k) to the decision device. The block diagram of the combiner gain normalizer block 1250 is similar to that of the channel gain normalizer 7 of FIG. 1, except that the input z_(k) ^(c) to the block 7 is replaced by the input 1239 s_(k). The decision device is similar to that given by the block 11 of FIG. 1.

Referring to FIG. 15, the multilevel adaptation block 1280 generates the first correction signal vector w_(k) ^(c) ¹ to minimize the error between â_(k) and a_(k) ^(d) by minimizing the function

$\begin{matrix} {I_{1\;} = {E\left\lbrack {{a_{k}^{d} - {\hat{a}}_{k}}}^{2} \right\rbrack}} & (92) \\ {{\hat{a}}_{k} = {{s_{k}/G_{k}^{m}} = {\frac{1}{G_{k}^{m}}{\overset{\hat{\_}}{w}}_{k}^{bT}{\overset{\_}{v}}_{k}}}} & (93) \end{matrix}$

where G_(k) ^(m) is the modified gain estimate obtained by the combiner gain normalizer 1250, v _(k)=[v_(1,k), v_(2,k), . . . , v_(N,k)]^(T), and ŵ _(k) ^(b)=[ŵ_(1,k) ^(b), . . . ,ŵ_(N,k) ^(b)]^(T) is the beam former weight vector. Substitution of â_(k) form (93) in (92) results in

|₁ =E[|a _(k) ^(d) − ŵ _(k) ^(T) v _(k)|²]  (94)

where ŵ _(k)= ŵ _(k) ^(b)/G_(k) ^(m) is the normalized beam former weight vector. The gradient of |₁ with respect to ŵ _(k) is given by

$\begin{matrix} {\frac{\partial I_{1}}{\partial{\overset{\hat{\_}}{w}}_{k}} = {- {E\left\lbrack {{\overset{\_}{v}}_{k}\left( {a_{k}^{d} - {{\overset{\hat{\_}}{w}}_{k}^{T}{\overset{\_}{v}}_{k}}} \right)}^{*} \right\rbrack}}} & (95) \end{matrix}$

From (95) the first correction signal vector w_(k) ^(c) ^(1 is given by)

w _(k) ^(c) ¹ = v _(k)(a _(k) ^(d) − ŵ _(k) ^(T) v _(k))*  (96)

The second correction signal vector w_(k) ^(c) ² is derived on the basis of the model error. Referring to FIG. 15, the complex baseband signal vector v _(k) is given by

v _(k) =a _(k) g+ n _(k)  (97)

In (97) g=[g_(1,k), g_(2,k), . . . , g_(N,k)]^(T) is a scalar gain times the antenna array direction vector and n _(k) is the noise vector. From (93) and (97) one obtains

â _(k) = ŵ _(k) ^(T) ga _(k) + ŵ _(k) ^(T) n _(k)  (98)

Thus ignoring the noise term in (8) the linear estimate of the data symbol â_(k) will be equal to â_(k) if w _(k) ^(T) g=1 and the difference is the model error. Thus the model error is minimized by the minimization of the function

|₂ =E[|1− ŵ _(k) ^(T) g| ²]  (99)

The gradient of I₂ with respect to ŵ _(k) is given by

$\begin{matrix} {\frac{\partial I_{2}}{\partial{\overset{\hat{\_}}{w}}_{k\;}} = {- {E\left\lbrack {\overset{\_}{g}\left( {1 - {{\overset{\_}{w}}_{k}^{T}\overset{\_}{g}}} \right)}^{*} \right\rbrack}}} & (100) \end{matrix}$

Replacing a_(k) by a_(k) ^(d) in (97) results in the following exponentially data weighted Kalman filter algorithm for the estimate of g,

ĝ _(k) = ĝ ^(k−1) +K _(k)( v−a _(k) ^(d) ĝ _(k−1))*;k=1,2,  (101a)

K _(k) =P _(k−1) a _(k)(|a _(k)|² P _(k−1) +λR _(k))⁻¹ =P _(k) a _(k) R _(k) ⁻¹  (101b)

P _(k)=λ⁻¹ [P _(k−1) −|a _(k)|² P _(k−1)(|a _(k)|² P _(k−1) +λR _(k))⁻¹ P _(k−1)]  (101c)

In (101) ĝ ₀ may be selected to be some a-priori estimate of g and P₀ set equal to εI for some scalar ε>0 with I denoting the N×N identity matrix. In (101) K_(k) is the Kalman gain matrix, P_(k) is the filter error covariance matrix, R_(k) denotes the covariance matrix of the noise vector n _(k) appearing in (97), and λ is the exponential data weighting coefficient with 0<λ<1. In general R_(k) is an (N×N) matrix with possibly nonzero off diagonal elements when the noise n _(k) is spatially correlated.

For the special case of uncorrelated spatial noise, R_(k) is a diagonal matrix with R_(k)=r_(k) I and with r_(k) denoting the variance of each component of n _(k). With the matrix P₀ selected to be a diagonal matrix, and R_(k) a diagonal matrix, P_(k) from (101c) is also diagonal for all k>0. With P_(k) diagonal with P_(k)=p_(k)I for some scalar p_(k)>0, equation (101c) may be simplified to

$\begin{matrix} {{p_{k} = {\frac{r_{k}}{{\lambda \; r_{k}} + {a_{k}}^{2}}p_{k - 1}}};{k > 0}} & \left( {101d} \right) \end{matrix}$

Replacing g by its estimate ĝ _(k) in (100) results in the second correction signal vector given by

w _(k) ^(c) ² = ĝ ^(k)(1− ŵ _(k) ^(T) ĝ _(k))*  (102)

The robustness of the adaptive beam former may be further increased by simultaneously maximizing the signal to noise power ratio at the combiner output by maximizing the signal power at the output of the combiner while keeping the norm of the combiner weight vector ŵ _(k) close to 1. Equivalently the objective function I₃ given by (103) is minimized with respect to ŵ _(k).

$\begin{matrix} {I_{3} = {{\frac{1}{2}{\kappa \left( {1 - {{\overset{\hat{\_}}{w}}_{k}}^{2}} \right)}^{2}} - {E\left\lbrack {{{\overset{\hat{\_}}{w}}^{T}{\overset{\_}{v}}_{k}}}^{2} \right\rbrack}}} & (103) \end{matrix}$

In (103) κ is some positive weighting scalar. The gradient of I₃ in (103) with respect to ŵ _(k) is given by

$\begin{matrix} {\frac{\partial I_{3}}{\partial{\overset{\hat{\_}}{w}}_{k}} = {{{\kappa \left( {1 - {{\overset{\hat{\_}}{w}}_{k}}^{2}} \right)}{\overset{\hat{\_}}{w}}_{k}^{*}} - {E\left\lbrack {{\overset{\_}{v}}_{k}{\hat{a}}^{*}} \right\rbrack}}} & (104) \end{matrix}$

From (104), a third correction signal vector is given by

w _(k) ^(c) ³ = v _(k) â*−κ(1−∥ ŵ _(k)∥²) ŵ ^(k)*  (105)

The update algorithm implemented by the multilevel adaptation block 1280 is given by

ŵ _(k+1) = ŵ _(k)+μ₁ v _(k)(a _(k) ^(d) − ŵ _(k) ^(T) v _(k))*+μ₂ ĝ _(k)(1− ŵ _(k) ^(T) ĝ _(k))*+μ₃ v _(k) â*−μ ₄(1−∥ ŵ _(k)∥²) ŵ _(k)*  (106a)

ŵ _(k+1) ^(b) = ŵ _(k+1) /G _(k) ^(m) ;k=0,1,  (106b)

with the combiner gain G_(k) ^(m) inputted by block 1250, ĝ _(k) updated according to (101) and μ₁, μ₂, μ₃ and μ₄ equal to some small positive scalars to achieve convergence of (106). The initial estimate ŵ ₀ in (106a) may be some a priori estimate of w.

Various modifications and other embodiments of the invention applicable to various problems in Engineering and other fields will be readily apparent to those skilled in the art in the field of invention. For example, the architecture of the beam former can also be applied to the problem of diversity combining. In various other possible modifications, the level 1 adaptive system of FIG. 1 can be modified to include the constant modulus algorithm in those cases where the data symbol have constant modulus to provide additional robustness to the CMA based equalizers. As another example, the adaptive digital beam former architecture can be generalized to the case of broadband source wherein the various antenna gains and combiner weights are replaced by digital filters similar to the equalizer filter 9 of FIG. 1. The equalizer architectures of the invention can be readily modified and applied to various fields where an equalizer or combiner architecture is applicable but without the requirements of any training sequences. Examples of such fields include radio astronomy, seismology, digital audio signal processing and so on.

It is to be understood that the figures and descriptions of the present invention have been simplified to illustrate elements that are relevant for a clear understanding of the present invention, while eliminating other elements, for purposes of clarity. Those of ordinary skill in the art will recognize that these and other elements may be desirable. However, because such elements are well known in the art and because they do not facilitate a better understanding of the present invention, a discussion of such elements is not provided herein.

In general, it will be apparent to one of ordinary skill in the art that at least some of the embodiments described herein, including, for example, all of the modules of FIG. 1, may be implemented in many different embodiments of software, firmware, and/or hardware, for example, based on Field Programmable Gate Array (FPGA) chips or implemented in Application Specific Integrated Circuits (ASICS). The software and firmware code may be executed by a computer or computing device comprising a processor (e.g., a DSP or any other similar processing circuit) including, for example, the computing device 1600 described below. The processor may be in communication with memory or another computer readable medium comprising the software code. The software code or specialized control hardware that may be used to implement embodiments is not limiting. For example, embodiments described herein may be implemented in computer software using any suitable computer software language type, using, for example, conventional or object-oriented techniques. Such software may be stored on any type of suitable computer-readable medium or media, such as, for example, a magnetic or optical storage medium. According to various embodiments, the software may be firmware stored at an EEPROM and/or other non-volatile memory associated a DSP or other similar processing circuit. The operation and behavior of the embodiments may be described without specific reference to specific software code or specialized hardware components. The absence of such specific references is feasible, because it is clearly understood that artisans of ordinary skill would be able to design software and control hardware to implement the embodiments based on the present description with no more than reasonable effort and without undue experimentation.

FIG. 16 shows an example of a computing device 1600 according to one embodiment. For the sake of clarity, the computing device 1600 is illustrated and described here in the context of a single computing device. However, it is to be appreciated and understood that any number of suitably configured computing devices can be used to implement a described embodiment. For example, in at least some implementations, multiple communicatively linked computing devices may be used. One or more of these devices can be communicatively linked in any suitable way such as via one or more networks. One or more networks can include, without limitation: the Internet, one or more local area networks (LANs), one or more wide area networks (WANs) or any combination thereof.

In the example of FIG. 16, the computing device 1600 comprises one or more processor circuits or processing units 1602, one or more memory circuits and/or storage circuit component(s) 1604 and one or more input/output (I/O) circuit devices 1606. Additionally, the computing device 1600 comprises a bus 1608 that allows the various circuit components and devices to communicate with one another. The bus 1608 represents one or more of any of several types of bus structures, including a memory bus or memory controller, a peripheral bus, an accelerated graphics port, and a processor or local bus using any of a variety of bus architectures. The bus 1608 may comprise wired and/or wireless buses. The processing unit 1602 may be responsible for executing various software programs such as system programs, applications programs, and/or program modules/blocks to provide computing and processing operations for the computing device 1600. The processing unit 1602 may be responsible for performing various voice and data communications operations for the computing device 1600 such as transmitting and receiving voice and data information over one or more wired or wireless communications channels. Although the processing unit 1602 of the computing device 1600 is shown in the context of a single processor architecture, it may be appreciated that the computing device 1600 may use any suitable processor architecture and/or any suitable number of processors in accordance with the described embodiments. In one embodiment, the processing unit 1602 may be implemented using a single integrated processor. The processing unit 1602 may be implemented as a host central processing unit (CPU) using any suitable processor circuit or logic device (circuit), such as a as a general purpose processor. The processing unit 1602 also may be implemented as a chip multiprocessor (CMP), dedicated processor, embedded processor, media processor, input/output (I/O) processor, co-processor, microprocessor, controller, microcontroller, application specific integrated circuit (ASIC), field programmable gate array (FPGA), programmable logic device (PLD), or other processing device in accordance with the described embodiments.

As shown, the processing unit 1602 may be coupled to the memory and/or storage component(s) 1604 through the bus 1608. The bus 1608 may comprise any suitable interface and/or bus architecture for allowing the processing unit 1602 to access the memory and/or storage component(s) 1604. Although the memory and/or storage component(s) 1604 may be shown as being separate from the processing unit 1602 for purposes of illustration, it is worthy to note that in various embodiments some portion or the entire memory and/or storage component(s) 1604 may be included on the same integrated circuit as the processing unit 1602. Alternatively, some portion or the entire memory and/or storage component(s) 1604 may be disposed on an integrated circuit or other medium (e.g., hard disk drive) external to the integrated circuit of the processing unit 1602. In various embodiments, the computing device 1600 may comprise an expansion slot to support a multimedia and/or memory card, for example. The memory and/or storage component(s) 1604 represent one or more computer-readable media. The memory and/or storage component(s) 1604 may be implemented using any computer-readable media capable of storing data such as volatile or non-volatile memory, removable or non-removable memory, erasable or non-erasable memory, writeable or re-writeable memory, and so forth. The memory and/or storage component(s) 1604 may comprise volatile media (e.g., random access memory (RAM)) and/or nonvolatile media (e.g., read only memory (ROM), Flash memory, optical disks, magnetic disks and the like). The memory and/or storage component(s) 1604 may comprise fixed media (e.g., RAM, ROM, a fixed hard drive, etc.) as well as removable media (e.g., a Flash memory drive, a removable hard drive, an optical disk). Examples of computer-readable storage media may include, without limitation, RAM, dynamic RAM (DRAM), Double-Data-Rate DRAM (DDRAM), synchronous DRAM (SDRAM), static RAM (SRAM), read-only memory (ROM), programmable ROM (PROM), erasable programmable ROM (EPROM), electrically erasable programmable ROM (EEPROM), flash memory (e.g., NOR or NAND flash memory), content addressable memory (CAM), polymer memory (e.g., ferroelectric polymer memory), phase-change memory, ovonic memory, ferroelectric memory, silicon-oxide-nitride-oxide-silicon (SONOS) memory, magnetic or optical cards, or any other type of media suitable for storing information.

The one or more I/O devices 1606 allow a user to enter commands and information to the computing device 1600, and also allow information to be presented to the user and/or other components or devices. Examples of input devices include data ports, analog to digital converters (ADCs), digital to analog converters (DACs), a keyboard, a cursor control device (e.g., a mouse), a microphone, a scanner and the like. Examples of output devices include data ports, ADC's, DAC's, a display device (e.g., a monitor or projector, speakers, a printer, a network card). The computing device 1600 may comprise an alphanumeric keypad coupled to the processing unit 1602. The keypad may comprise, for example, a QWERTY key layout and an integrated number dial pad. The computing device 1600 may comprise a display coupled to the processing unit 1602. The display may comprise any suitable visual interface for displaying content to a user of the computing device 1600. In one embodiment, for example, the display may be implemented by a liquid crystal display (LCD) such as a touch-sensitive color (e.g., 76-bit color) thin-film transistor (TFT) LCD screen. The touch-sensitive LCD may be used with a stylus and/or a handwriting recognizer program.

The processing unit 1602 may be arranged to provide processing or computing resources to the computing device 1600. For example, the processing unit 1602 may be responsible for executing various software programs including system programs such as operating system (OS) and application programs. System programs generally may assist in the running of the computing device 1600 and may be directly responsible for controlling, integrating, and managing the individual hardware components of the computer system. The OS may be implemented, for example, as a Microsoft® Windows OS, Symbian OS™, Embedix OS, Linux OS, Binary Run-time Environment for Wireless (BREW) OS, JavaOS, or other suitable OS in accordance with the described embodiments. The computing device 1600 may comprise other system programs such as device drivers, programming tools, utility programs, software libraries, application programming interfaces (APIs), and so forth.

In various embodiments disclosed herein, a single component may be replaced by multiple components and multiple components may be replaced by a single component to perform a given function or functions. Except where such substitution would not be operative, such substitution is within the intended scope of the embodiments. 

1. A blind mode equalizer system to recover in general complex valued data symbols from a signal transmitted over time-varying dispersive wireless channels, the system comprising: a channel gain normalizer comprised of a channel signal power estimator, a channel gain estimator and a parameter α estimator for providing nearly constant average power for the normalized output signal and for normalizing a channel with a dominant tap of a normalized channel adjusted to close to 1; a blind mode equalizer with hierarchical structure (BMAEHS) comprised of a level 1 adaptive system and a level 2 adaptive system for equalization of a normalized channel output; and an initial data recovery circuit comprised of a quantizer, a memory, a fixed equalizer for recovery of data symbols received during an initial convergence period of the BMAEHS and pre appending the recovered symbols to a detected symbol output of the BMAEHS providing a continuous stream of all detetced symbols.
 2. The BMAEHS of the system of claim 1, wherein the level 1 adaptive system is further comprised of: an equalizer filter providing a linear estimate of the data symbol; a decision device providing the detected data symbol; an adaptation block generating the equalizer parameter vector on a basis of a first correction signal generated within the adaptation block and a second correction signal inputted from the level 2 adaptive system.
 3. The system of claim 1 wherein the level 2 adaptive system is comprised of a model error estimator and correction signal generator (MEECGS) providing the second correction signal generated on the basis of the equalizer model error estimated from the delayed normalized output, the detected data symbol and the equalizer parameter.
 4. The system of claim 3 wherein the MEECGS is further comprised of a channel estimator for providing the estimate of the normalized channel impulse response vector; and a correction signal generator (CGS).
 5. The system of claim 2 wherein the equalizer filter is a linear equalizer filter.
 6. The system of claim 4 wherein the CGS is a correction signal generator for linear equalizer (CGS-LEQ) generating the second correction signal.
 7. The system of claim 6 wherein the second correction signal is a gradient of a norm square of an error vector equal to a difference between a convolution of an estimate of a normalized channel impulse response vector and an equalizer parameter vector and an impulse vector.
 8. The system of claim 6 wherein the second correction signal is a gradient of a weighted sum of a second power and a fourth power of a norm of the error vector of claim
 7. 9. The system of claim 6 wherein the second correction signal is the gradient of the weighted sum of the norm square of the equalizer parameter vector and the second power and the fourth power of the norm of the error vector of claim
 7. 10. The system of claim 7 wherein second correction signal is obtained by truncation of the convolution of the complex conjugate of the said error vector with the vector obtained after reversing an order of elements of the estimate of the normalized channel impulse response vector.
 11. The system of claim 6 wherein the CGS-LEQ is comprised of a matrix collator and a matrix vector multipliers.
 12. The system of claim 11 wherein the CGS-LEQ implements the matrix vector multiplications via Fast Fourier Transform (FFT) and Inverse FFT (IFFT).
 13. The system of claim 4, wherein the estimate of the normalized channel impulse response vector is obtained with at least one of the method selected from the group of exponentially data weighted recursive least squares (ERLS) algorithm, exponentially data weighted Kalman filter, quantized state (QS) algorithm, and LMS algorithm.
 14. The system of claim 2, wherein the first correction signal vector is the stochastic gradient of the magnitude square of the difference between the linear estimate of the data symbol and the detected data symbol.
 15. The system of claim 2, wherein the first correction signal vector is the stochastic gradient of the exponentially data weighted sum of the magnitude square of the difference between the linear estimate of the data symbol and the detected data symbol.
 16. The system of claim 2, wherein the equalizer filter is the decision feedback equalizer (DFE) filter.
 17. The system of claim 4, wherein the CGS is a correction signal generator for decision feedback equalizer (CGS-DFE) generating the second correction signal.
 18. The system of claim 17, wherein the equalizer parameter vector is split into a equalizer parameter 1 vector and a equalizer parameter 2 vector with the length of the equalizer parameter 2 vector equal to the number of feedback taps in the DFE.
 19. The system of claim 1, wherein the BMAEHS is the BMAEHS with an orthogonalizer, for an increased rate of convergence, the BMAEHS with an orthogonalizer comprised of: the equalizer filter; the decision device; a means for providing the first correction signal vector; the MEECGS providing the second correction signal vector; the correction signal vectors normalizer for providing the normalized correction signal vectors; the orthogonalizer for providing the orthogonalized correction signal vector; and the means for updating the equalizer parameter vector on the basis of the orthogonalized correction signal vector.
 20. The system of claim 1, wherein the BMAEHS is replaced by a cascade of multiple equalizer stages with multiplicity m greater than 1 and with each equalizer stage selected to be one of the BMAEHS or the blind mode adaptive equalizer (BMAE) and wherein the input to the i^(th) equalizer stage is the linear estimate of data symbol generated by the (i−1)^(th) equalizer stage, and the detected data symbol from the (i−1)^(th) equalizer stage provides the training sequence to the i^(th) equalizer stage during the initial convergence period of the i^(th) equalizer stage for i=2, . . . , m.
 21. The system of claim 21, wherein m=2, with the first equalizer stage is selected to be a BMAEHS and the second equalizer stage selected to be a BMAE.
 22. The system of claim 22 wherein the adaptive algorithm for the update of the equalizer parameter vector for the BMAE is selected to be one of the group consisting of the LMS, ERLS, and QS algorithms.
 23. The system of claim 1, wherein the data symbols are the output of the differential encoder inputted with the complex valued baseband symbols generated by a complex baseband modulator.
 24. The system of claim 1, wherein the detected data symbols are further decoded by a differential decoder providing the detected baseband symbols.
 25. The system of claim 24, wherein the differential encoder is for providing protection against phase ambiguity with the number of phase ambiguities equal to the order of rotational symmetry of the signal constellation of the baseband symbols.
 26. The system of claim 24, wherein the differential encoder is comprised of: a phase threshold device for providing the reference phase for the sector to which the baseband symbol belongs; a differential phase encoder, an adder to modify the output of the differential phase encoder by a difference phase; a complex exponential function block; and a multiplier to modulate the amplitude of the baseband symbol onto the output of the complex exponential function block.
 27. The system of claim 25, wherein the differential decoder is comprised of: a phase threshold device for providing the reference phase for the sector to which the detected symbol belongs; a differential phase decoder, an adder to modify the output of the differential phase decoder by a difference phase; a complex exponential function block; and a multiplier to modulate the amplitude of the detected symbol onto the output of the complex exponential function block.
 28. The system of claim 24, wherein the baseband symbols are the modulated signals modulated according to at least one method selected from the group consisting of M-quadrature amplitude modulation (MQAM), M-phase shift keying (MPSK), M-phase shift keying (MPSK), M-pulse amplitude shift keying (MASK) modulated signals, and M-pulse amplitude modulation (MPAM) wherein the order of modulation M is the number of points in the signal constellation.
 29. System of claim 29, wherein the order of the rotational symmetry is equal to 4 for MQAM modulated signals with the order of modulation M equal to N² wherein the integer N is an integer power of
 2. 30. The system of claim 29, wherein the order of modulation M is equal to
 16. 31. The system of claim 28, wherein the modulation type is MPAM with M equal to
 4. 32. The system of claim 1, wherein the parameter cc estimator block is further comprised of: a complex absolute value block for providing the complex output with the real and imaginary components equal to the absolute values of the real and imaginary components respectively; an averaging block; a divider for normalizing the output of the averaging block by the expected value of the complex absolute value of the data symbols providing a complex valued error signal that is a measure of the deviation between the probability distribution of the data symbols and that of the detected data symbols; and a means of adaptively updating the parameter α estimate on the basis of the said error signal.
 33. System of claim 2, wherein the data symbols take values from the finite set of M values and the decision device selects that particular value from the set S that minimizes the norm of the difference between the input and output of the decision device.
 34. The system of claim 2, wherein the data symbols are MQAM symbols and the decision device is comprised of a pair of slicers, one for each of the real and imaginary components of the input to the decision device.
 35. The system of claim 2, wherein the data symbols are MPSK symbols and the decision device is comprised of a means to normalize the input of the decision device by the absolute value of the input and a pair of slicers, one for each of the real and imaginary components of the normalized input.
 36. An adaptive communication receiver for the demodulation and detection of digitally modulated signals received over wireless communication channels exhibiting multipath and fading, the receiver comprising: an RF front end; an RF to complex baseband converter; a band limiting matched filter; a channel gain normalizer; a blind mode adaptive equalizer with hierarchical structure; an initial data segment recovery circuit; a differential decoder; a complex baseband to data bit mapper; and an error correction code decoder and de-interleaver
 37. An adaptive digital beam former system for the demodulation and detection of digitally modulated signals in blind mode received over an antenna array of N elements, the system comprising: an RF front end for each of the N array elements; an RF to complex baseband converter for each of the N array elements; a weighted signal combiner with adaptive weights; a combiner gain normalizer; a decision device; and a multilevel adaptation subsystem for the adaptation of the combiner weights
 38. A computer-implemented method for recovering the complex valued data symbols from the signal transmitted over time-varying dispersive wireless channels, the method comprising: receiving, by a computer device, the channel output signal, wherein the computer device comprises at least one processor and associated memory; implementing, by the computer device, a channel gain normalizer comprised of a channel signal power estimator, a channel gain estimator and a parameter cc estimator for providing nearly constant average power for the normalized output signal and for normalizing the channel with the dominant tap of the normalized channel adjusted to close to 1; implementing, by the computer device, a blind mode equalizer with hierarchical structure (BMAEHS) comprised of a level 1 adaptive system and a level 2 adaptive system for the equalization of the normalized channel output; and implementing, by the computer device, an initial data recovery circuit comprised of a quantizer, a memory, a fixed equalizer for recovering of the data symbols received during the initial convergence period of the BMAEHS and for pre appending the recovered symbols to the detected symbols at the output of the BMAEHS providing a continuous stream of all the detected symbols.
 39. The method of claim 38, wherein the level 1 adaptive system of the BMAEHS further comprises: an equalizer filter for providing the linear estimate of the data symbol; the decision device for providing the detected data symbol; an adaptation block for generating the equalizer parameter vector on the basis of a first correction signal generated within the adaptation block and a second correction signal inputted from the level 2 adaptive system.
 40. The method of claim 38 wherein the level 2 adaptive system is comprised of a model error estimator and correction signal generator (MEECGS) providing the second correction signal generated on the basis of the equalizer model error estimated from the delayed normalized output, the detected data symbol and the equalizer parameter.
 41. The method of claim 40 wherein the MEECGS is further comprised of a channel estimator for providing the estimate of the normalized channel impulse response vector; and a correction signal generator (CGS).
 42. The method of claim 39 wherein the equalizer filter is a linear equalizer filter.
 43. The method of claim 41 wherein the CGS is a correction signal generator for linear equalizer (CGS-LEQ) generating the second correction signal.
 44. The method of claim 43 wherein the second correction signal is the gradient of the norm square of the error vector equal to the difference between the convolution of the estimate of the normalized channel impulse response vector and the equalizer parameter vector and the impulse vector.
 45. The method of claim 43 wherein the second correction signal is the gradient of the weighted sum of the second power and the fourth power of the norm of the error vector of claim
 7. 46. The method of claim 43 wherein the second correction signal is the gradient of the weighted sum of the norm square of the equalizer parameter vector and the second power and the fourth power of the norm of the error vector of claim
 7. 47. The method of claim 44 wherein second correction signal is obtained by truncation of the convolution of the complex conjugate of the said error vector with the vector obtained after reversing the order of elements of the estimate of the normalized channel impulse response vector.
 48. The method of claim 43 wherein the CGS-LEQ is comprised of a matrix collator and a matrix vector multipliers.
 49. The method of claim 48 wherein the CGS-LEQ implements the matrix vector multiplications via Fast Fourier Transform (FFT) and Inverse FFT (IFFT).
 50. The method of claim 41, wherein the estimate of the normalized channel impulse response vector is obtained with at least one of the method selected from the group consisting of exponentially data weighted recursive least squares (ERLS) algorithm, exponentially data weighted Kalman filter, quantized state (QS) algorithm, and LMS algorithm.
 51. The method of claim 39, wherein the first correction signal vector is the stochastic gradient of the magnitude square of the difference between the linear estimate of the data symbol and the detected data symbol.
 52. The method of claim 39, wherein the first correction signal vector is the stochastic gradient of the exponentially data weighted sum of the magnitude square of the difference between the linear estimate of the data symbol and the detected data symbol.
 53. The method of claim 39, wherein the equalizer filter is the decision feedback equalizer (DFE) filter.
 54. The method of claim 41, wherein the CGS is a correction signal generator for decision feedback equalizer (CGS-DFE) generating the second correction signal.
 55. The method of claim 54, wherein the equalizer parameter vector is split into a equalizer parameter 1 vector and a equalizer parameter 2 vector with the length of the equalizer parameter 2 vector equal to the number of feedback taps in the DFE.
 56. The method of claim 38, wherein the BMAEHS is the BMAEHS with an orthogonalizer, for an increased rate of convergence, the BMAEHS with an orthogonalizer implemented by the computer device and comprised of implementing with the computer device: the equalizer filter; the decision device; a means for providing the first correction signal vector; the MEECGS providing the second correction signal vector; the correction signal vectors normalizer for providing the normalized correction signal vectors; the orthogonalizer for providing the orthogonalized correction signal vector; and the means for updating the equalizer parameter vector on the basis of the orthogonalized correction signal vector.
 57. The method of claim 38, wherein the BMAEHS is replaced by a cascade of multiple equalizer stages with multiplicity m greater than 1 and with each equalizer stage selected to be one of the BMAEHS or the blind mode adaptive equalizer (BMAE) with each stage of the cascade implemented by the computer device.
 58. The method of claim 57, wherein the input to the i^(th) equalizer stage is the linear estimate of data symbol generated by the (i−1)^(th) equalizer stage, and the detected data symbol from the (i−1)^(th) equalizer stage provides the training sequence to the i^(th) equalizer stage during the initial convergence period of the i^(th) equalizer stage for i=2, . . . , m.
 59. The method of claim 58, wherein m=2, with the first equalizer stage selected to be a BMAEHS and the second equalizer stage selected to be a BMAE.
 60. The method of claim 59 wherein the adaptive algorithm for the update of the equalizer parameter vector for the BMAE is selected to be one of the group consisting of the LMS, ERLS, and QS algorithms.
 61. The method of claim 38, wherein the data symbols are the output of the differential encoder implemented by the computer device and inputted with the complex valued baseband symbols generated by a complex baseband modulator.
 62. The method of claim 38, wherein the detected data symbols are further decoded by a differential decoder implemented by the computer device for providing the detected baseband symbols.
 63. The method of claim 61, wherein the differential encoder is for providing protection against phase ambiguity with the number of phase ambiguities equal to the order of rotational symmetry of the signal constellation of the baseband symbols.
 64. The method of claim 61, wherein the differential encoder is comprised of: a phase threshold device for providing the reference phase for the sector to which the baseband symbol belongs; a differential phase encoder, an adder to modify the output of the differential phase encoder by a difference phase; a complex exponential function block; and a multiplier to modulate the amplitude of the baseband symbol onto the output of the complex exponential function block.
 65. The method of claim 62, wherein the differential decoder is comprised of: a phase threshold device for providing the reference phase for the sector to which the detected symbol belongs; a differential phase decoder, an adder to modify the output of the differential phase decoder by a difference phase; a complex exponential function block; and a multiplier to modulate the amplitude of the detected symbol onto the output of the complex exponential function block.
 66. The method of claim 61, wherein the baseband symbols are the modulated signals modulated according to at least one method selected from the group consisting of M-quadrature amplitude modulation (MQAM), M-phase shift keying (MPSK), M-phase shift keying (MPSK), M-amplitude shift keying (MASK), and M-pulse amplitude modulation (MPAM) modulated signals, wherein the order of modulation M is the number of points in the signal constellation.
 67. Method of claim 66, wherein the order of the rotational symmetry is equal to 4 for MQAM modulated signals with the order of modulation M equal to N² wherein the integer N is an integer power of
 2. 68. The method of claim 67, wherein the order of modulation M is equal to
 16. 69. The method of claim 66, wherein the modulation is MPAM with M equal to
 4. 70. The method of claim 38, wherein the parameter cc estimator block implemented by the computer device is further comprised of: a complex absolute value block for providing the complex output with the real and imaginary components equal to the absolute values of the real and imaginary components respectively; an averaging block; a divider for normalizing the output of the averaging block by the expected value of the complex absolute value of the data symbols providing a complex valued error signal that is a measure of the deviation between the probability distribution of the data symbols and that of the detected data symbols; and a means of adaptively updating the parameter cc estimate on the basis of the said error signal.
 71. Method of claim 39, wherein the data symbols take values from the finite set of M values and the decision device implemented by the computer device selects that particular value from the set S that minimizes the norm of the difference between the input and output of the decision device.
 72. The method of claim 39, wherein the data symbols are MQAM symbols and the decision device is comprised of a pair of slicers, one for each of the real and imaginary components of the input to the decision device.
 73. The method of claim 39, wherein the data symbols are MPSK symbols and the decision device implemented by the computer device is comprised of a method to normalize the input of the decision device by the absolute value of the input and a pair of slicers, one for each of the real and imaginary components of the normalized input.
 74. A receiver method comprised of receiving an input signal by an RF front end; and a computer-implemented method for adaptive demodulation and detection of digitally modulated signals received over wireless communication channels exhibiting multipath and fading, the computer-implemented method further comprising: conversion to baseband by an RF to complex baseband converter implemented by a computer device, wherein the computer device comprises at least one processor and associated memory; band limiting matched filtering by the computer device; normalizing channel gain by the computer device; implementing a blind mode adaptive equalizer with hierarchical structure (BMAEHS) by the computer device; recovering initial data segment, by the computer device, during the initial convergence period of the BMAEHS; differential decoding, by the computer device; complex baseband to data bit mapping, by the computer device; and error correction code decoding and de-interleaving, implemented by the computer device providing the detected information data at the output of the computer device.
 75. An adaptive digital beam former method comprised of receiving RF source signal by an antenna array of N elements, N RF front end receiver blocks and a computer-implemented method for the demodulation and detection of digitally modulated signals in blind mode, the method comprised of: conversion to N baseband signals by N RF to complex baseband converters implemented by a computer device; combining N complex baseband signals by a combiner with adaptive weights implemented by a computer device; normalizing the combiner output by the combiner gain normalizer implemented by a computer device; detection of the data symbols with decision device implemented by a computer device; and implementing a multilevel adaptation subsystem for the adaptation of the combiner weights by a computer device. 